From MAILER-DAEMON Sat Oct 01 16:50:51 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bqRFD-0001uX-PB for mharc-igraph-help@gnu.org; Sat, 01 Oct 2016 16:50:51 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:42515) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bqNRG-00033P-5r for igraph-help@nongnu.org; Sat, 01 Oct 2016 12:47:03 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bqNRD-0003kh-Ig for igraph-help@nongnu.org; Sat, 01 Oct 2016 12:47:01 -0400 Received: from mail-lf0-x231.google.com ([2a00:1450:4010:c07::231]:33497) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bqNRC-0003dS-1F for igraph-help@nongnu.org; Sat, 01 Oct 2016 12:46:59 -0400 Received: by mail-lf0-x231.google.com with SMTP id t81so60511401lfe.0 for ; Sat, 01 Oct 2016 09:46:54 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=students-uu-nl.20150623.gappssmtp.com; s=20150623; h=mime-version:from:date:message-id:subject:to; bh=un281Cgt7rCU9196eZL4iqaRo883EAX0SlyEmZZbV+s=; b=FIPHRLFCAemUBzANUoyCEpPBbgejnGPXmPm5kP2SilboBDc9CTfolDZ6Q0x9GvObxH A/T3yfS+wf6XRzoUDiT7kgOK8u2ws+yt42TxoTpmUgc0EimXLcrhFLXmC7Czgh3oL8vn tzc3TsnexsyvQOy19n8M8lLgP2AIpXbHvvhZlRtXbfGQDjOxhmALYUWEGJx9fi7UO7dO L3luuOmPKOG2FTJNbCaozsCClk9+sCpLyIlxuFnpFs3hqRL8d/bbZnWGFHHOlJT2jag3 Cbnm5D9uPzJ03m9wrPIlvRA5qEtsFiYMmTMalsTfyDfWbdKc8NTM8j+0G2OCbAhcC/ek 8pGw== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:from:date:message-id:subject:to; bh=un281Cgt7rCU9196eZL4iqaRo883EAX0SlyEmZZbV+s=; b=VgDYyjfSyA+yo+tDcMUJZBZRWSW4Qsm6KSc3u2DuoHANvr/jq63EK0cwZmhL/GZ4Ju GZ3Wv+F3gcsi652QPT8h3cHd160AesPMsk94y3Tgau91kbelFmadrNSsrAOAEI6kfOxa mfmJk9dO2ZGSrZMvXoe9RfW/UqvH71vz5qA7ueGpZC6WGRf2RNIm5gMDYY+AL50Zqunc tbnMzQeIh3aiEfpZZ2N021by5gQJ2IeOnoiPJYvuqx251+ll35vg3gtViJtN9zKoml+V FXxj1DxzulQE4bDPW4uBIgvtGkj54xUSecSbiAKwWqh8Uh9pETUJ7bfDHpxWIbacViG9 /zVg== X-Gm-Message-State: AA6/9Rkg+MhGK4A/1ULqXf7oej5ZQT0UBO1D12njRqYrACn1vZZGR/HF6WSQdIo5uSf/paH22RG2XCM1Z9LbKf8f X-Received: by 10.46.5.9 with SMTP id 9mr5189913ljf.17.1475340413001; Sat, 01 Oct 2016 09:46:53 -0700 (PDT) MIME-Version: 1.0 Received: by 10.114.82.1 with HTTP; Sat, 1 Oct 2016 09:46:52 -0700 (PDT) From: Chiao-Jou Lin Date: Sat, 1 Oct 2016 18:46:52 +0200 Message-ID: To: igraph-help@nongnu.org Content-Type: multipart/mixed; boundary=001a114a69ea3decd8053dd075cd X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2a00:1450:4010:c07::231 X-Mailman-Approved-At: Sat, 01 Oct 2016 16:50:49 -0400 Subject: [igraph] the impossibility to install igraph X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Sat, 01 Oct 2016 16:47:03 -0000 --001a114a69ea3decd8053dd075cd Content-Type: multipart/alternative; boundary=001a114a69ea3decd3053dd075cb --001a114a69ea3decd3053dd075cb Content-Type: text/plain; charset=UTF-8 Dear Sir/Madam, This is Chiao and I am writing to know how to solve some problems I met regarding the impossibility to install packages including igraph, devtools, and Matrix. According to my lecturer, one way to solve the problem is to change the security setting of my R folder and also Specify a folder for installation of the libraries (for each package). However, my mac laptop still can not work. The console showed that > install.packages("igraph") trying URL ' https://cran.rstudio.com/bin/macosx/mavericks/contrib/3.3/igraph_1.0.1.tgz' Content type 'application/x-gzip' length 6598610 bytes (6.3 MB) ================================================== downloaded 6.3 MB tar: Failed to set default locale The downloaded binary packages are in /var/folders/d5/3j28rxgs4y95c4pfjfxn7t580000gn/T//RtmpjOXrw1/downloaded_packages [please refer to the attached screen shot 'Failed to..'] For the package 'devtools', 'Matrix', they both had the same warning. After searching on website, I followed the instruction that put a code sentence at the final line like system("defaults write org.R-project.R force.LANG en_US.UTF-8") [as the attached screen shot 'system..' ] I have no idea what to do next. Please help me to solve the problem. I am looking forward to your reply. Kind regards, Chiao --001a114a69ea3decd3053dd075cb Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
Dear Sir/Madam= ,

<= div>This is Chiao and I am writ= ing to know how to solve some problems I met regarding=C2=A0the impossibility to = install packages=C2=A0including igrap= h,=C2=A0devtools, and Matrix.

According to my lecturer, one way to solve the problem is to = change=C2=A0=C2=A0the security=C2=A0setting of my R folder and also=C2=A0<= span style=3D"color:rgb(0,0,0);font-size:13px">Specify a folder for install= ation of the libraries (for each package).=C2=A0

<= /span>
However, my mac laptop still=C2=A0= can=C2=A0not work. The=C2=A0console = showed that=C2=A0
> install.packages("igraph")= =C2=A0
Content type '= ;application/x-gzip' length 6598610 bytes (6.3 MB)
=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D= =3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D= =3D=3D=3D=3D=3D=3D=3D
downloaded 6= .3 MB

tar: Failed to set default locale

The downloaded binary packages are in
/var/folders/d5/3j28rxgs4y95c4pfjfxn7t5800= 00gn/T//RtmpjOXrw1/downloaded_packages=C2=A0
[please refer to t= he attached screen shot 'Failed to..']


For the package 'devtools', 'Matr= ix', they both had the same warning.


= After searching on website, I followed the=C2=A0ins= truction that put a code sentence at the final line like
<= font color=3D"#000000">
system("defaults wri= te org.R-project.R force.LANG en_US.UTF-8")=C2=A0
[as the attached screen shot 's= ystem..' ]=C2=A0

I have no idea what to do next. Pl= ease help me to solve the problem.
I am looking forward to your r= eply.


Kind regards,
Chiao=

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igraph-help@nongnu.org; Sat, 01 Oct 2016 17:45:59 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bqS6V-0003H6-BX for igraph-help@nongnu.org; Sat, 01 Oct 2016 17:45:57 -0400 Received: from mail-qk0-x22d.google.com ([2607:f8b0:400d:c09::22d]:33872) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bqS6V-0003GR-4L for igraph-help@nongnu.org; Sat, 01 Oct 2016 17:45:55 -0400 Received: by mail-qk0-x22d.google.com with SMTP id j129so128307861qkd.1 for ; Sat, 01 Oct 2016 14:45:54 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:in-reply-to:references:from:date:message-id:subject:to; bh=rCLR2UkXc5KJaOwKnSYHXTlpuiU6sGCbZgF/E3dVhcg=; b=DKySCujJTHF3sDaijUVIoG0VNDwXzvuUf602CZFrSE5bFUJWjAC6afqhoZn4uM6DHF yzVLEz0rQ7/Btpv/ZW2WYsRrnvgB6f1wvG08/L8yr287z5Wx7BsWUFCW+ImGSmKNvaHv adWBTBSV3IehhEpLAbcfxiA2ql2M7fAG9ohBv9mYQBkgkrCrNXKux7PHQT3BCN6A7l1T 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HTTP; Sat, 1 Oct 2016 14:45:51 -0700 (PDT) In-Reply-To: References: From: Hermann Norpois Date: Sat, 1 Oct 2016 23:45:51 +0200 Message-ID: To: Help for igraph users Content-Type: multipart/alternative; boundary=001a11489f3477154a053dd4a241 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:400d:c09::22d Subject: Re: [igraph] the impossibility to install igraph X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Sat, 01 Oct 2016 21:46:00 -0000 --001a11489f3477154a053dd4a241 Content-Type: text/plain; charset=UTF-8 I guess you need to specify the lib directory https://stat.ethz.ch/R-manual/R-devel/library/utils/html/ install.packages.html "lib character vector giving the library directories where to install the packages. Recycled as needed. If missing, defaults to the first element of .libPaths ()" https://stat.ethz.ch/R-manual/R-devel/library/base/html/libPaths.html Check sys.glob! https://stat.ethz.ch/R-manual/R-devel/library/base/html/Sys.glob.html Try Sys.getenv (). Hope this helps. Hermann 2016-10-01 18:46 GMT+02:00 Chiao-Jou Lin : > Dear Sir/Madam, > > This is Chiao and I am writing to know how to solve some problems I met > regarding the impossibility to install packages including igraph, devtools, > and Matrix. > > According to my lecturer, one way to solve the problem is to change the > security setting of my R folder and also Specify a folder for > installation of the libraries (for each package). > > However, my mac laptop still can not work. The console showed that > > install.packages("igraph") > trying URL 'https://cran.rstudio.com/bin/macosx/mavericks/contrib/3.3/ > igraph_1.0.1.tgz' > Content type 'application/x-gzip' length 6598610 bytes (6.3 MB) > ================================================== > downloaded 6.3 MB > > tar: Failed to set default locale > > The downloaded binary packages are in > /var/folders/d5/3j28rxgs4y95c4pfjfxn7t580000gn/T//RtmpjOXrw1/downloaded_ > packages > [please refer to the attached screen shot 'Failed to..'] > > > For the package 'devtools', 'Matrix', they both had the same warning. > > > After searching on website, I followed the instruction that put a code > sentence at the final line like > > system("defaults write org.R-project.R force.LANG en_US.UTF-8") > [as the attached screen shot 'system..' ] > > I have no idea what to do next. Please help me to solve the problem. > I am looking forward to your reply. > > > Kind regards, > Chiao > > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help > > --001a11489f3477154a053dd4a241 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
I guess you need to specify the lib directory
https://stat.ethz.ch/R-manual/R-devel/libra= ry/utils/html/install.packages.html

"lib character vector giving the library directories where to install the packages. Recycled as needed. If missing, defaults to the first element of .libPaths()&= quot;

https://stat.ethz.ch/R-manual/R-d= evel/library/base/html/libPaths.html

Check sys.glob!

<= a href=3D"https://stat.ethz.ch/R-manual/R-devel/library/base/html/Sys.glob.= html" target=3D"_blank">https://stat.ethz.ch/R-manual/R-devel/library/= base/html/Sys.glob.html

Try Sys.getenv ().

<= p>Hope this helps.

Hermann



2016-10-01 18:46= GMT+02:00 Chiao-Jou Lin <c.lin3@students.uu.nl>:
Dear Sir/Madam,

This is Chiao and I am writing to know how to solve some problems I met re= garding=C2=A0the impossibility to install packages=C2=A0including igraph,=C2=A0devtools, and Matrix.

According to my lecturer, one way= to solve the problem is to change=C2=A0=C2= =A0the security=C2=A0setting of my R = folder and also=C2=A0Specify a folder for installation of the libraries (for each package).=C2=A0

Howev= er, my mac laptop still=C2=A0can=C2=A0> install= .packages("igraph")=C2=A0
Content type 'application/x-gzi= p' length 6598610 bytes (6.3 MB)
=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D= =3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D=3D= =3D=3D=3D
downloaded 6.3 MB=

tar: Failed to set default locale

The downloaded binary packages are in
/var/folders/d5/3j28rx= gs4y95c4pfjfxn7t580000gn/T//RtmpjOXrw1/downloaded_packages=C2=A0<= /font>
[please refer to the attached screen shot 'Failed to..']<= /font>


For the package = 'devtools', 'Matrix', they both had the same warning.


After searching on web= site, I followed the=C2=A0instruction that put a code sentence at the final= line like

<= div>system("defaults write org.R-project.R force.LANG en_US.UTF-8"= ;)=C2=A0
[as th= e attached screen shot 'system..' ]=C2=A0

I hav= e no idea what to do next. Please help me to solve the problem.
I= am looking forward to your reply.


= Kind regards,
Chiao


_______________________________________________
igraph-help mailing list
igraph-help@nongnu.org
https://lists.nongnu.org/mailman/listinfo/= igraph-help


--001a11489f3477154a053dd4a241-- From MAILER-DAEMON Sun Oct 02 12:44:29 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bqjsL-0004PG-8P for mharc-igraph-help@gnu.org; Sun, 02 Oct 2016 12:44:29 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:36066) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bqjsJ-0004Oc-2B for igraph-help@nongnu.org; Sun, 02 Oct 2016 12:44:28 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bqjsH-0008VR-2H for igraph-help@nongnu.org; Sun, 02 Oct 2016 12:44:26 -0400 Received: from mail-io0-x234.google.com ([2607:f8b0:4001:c06::234]:35976) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bqjsG-0008VK-Tf for igraph-help@nongnu.org; Sun, 02 Oct 2016 12:44:24 -0400 Received: by mail-io0-x234.google.com with SMTP id j37so6718600ioo.3 for ; Sun, 02 Oct 2016 09:44:24 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:sender:in-reply-to:references:from:date:message-id :subject:to; bh=OWGkZ3TGOiNThURiZluPGs6ZeOXHsGI7aVZ/GfvMTYs=; b=zeMlMn4nv5ke4NT7e4qEDW+H+MImKwpm26W30LqAn6HIhZFCh3M5yKHLUp5wDAbkHe jBE9lz+7xvLedKPEE/whcQLOzA2U8Oxv8djq7vgWh+66OLql8M1yr2XMnjwIFqXJd3uE /fs6+ryCu1RocnV9hPlRFso7NJw+Flf7J97AhwYf/y9R/fX+c1IWnhd/lpN3IdRGlNyF QtEep2Nx22sLi0CfjoyTG5QWTApx/7ai/U+ZSdK78TxX/bJ8MVBa0E8hfPjHoGS3fMHU +tQ0sAddRagVmVc5ENxdSt2xfIZfM/Y6V7ICNDdkx6V0SO8e+IcnxTBKrmORxUfWjbUv xcQw== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:sender:in-reply-to:references:from :date:message-id:subject:to; bh=OWGkZ3TGOiNThURiZluPGs6ZeOXHsGI7aVZ/GfvMTYs=; b=mdX+kfq1lSdRmPf/70cTfHQRxSMwkTEMgx0GTKF+BF8nsio70JLpwdNLrp+vMlMquy IXp03VLcpDzCPgHfKMRusddteZQeAuGYBZaCkDgv3iX7oBw2mfWf4zGIGqWsTWTq6+pX AcOf2K6bxxIYx96kIOLQhwk5UwMXmsj9UDBFfGHdlXpjnC5yZlIwwDVlw3jvr3KYp8HT 3Mee2HMmtlfMLUdq9FsoiyPbAwwJSYsM9lqsfdv8b12r+IgY6ftPPb6w0nqBl8QiB25e wFcZ7jGYxDz7+y6L+R1Pe0Y0PqkIJ1UBuBrbM+JJWMkYkEk9bD4iuIgVMDwGO2kV9Gag h+6w== X-Gm-Message-State: AA6/9Rk7xC/X9nRG+F0X2RvQB2VPFgQ9kGMd2Cw8J4g7T18bgsjao/QCDS1jXOJxo2H+hKjPFaiSjqr25iLvyg== X-Received: by 10.107.160.83 with SMTP id j80mr17177018ioe.27.1475426663799; Sun, 02 Oct 2016 09:44:23 -0700 (PDT) MIME-Version: 1.0 Sender: ntamas@gmail.com Received: by 10.107.26.14 with HTTP; Sun, 2 Oct 2016 09:44:23 -0700 (PDT) In-Reply-To: References: <20160921064938.6F9C3C600BC@webmail.sinamail.sina.com.cn> <81129C44-D01D-4887-A7C2-9ED50CA1C444@gmail.com> From: Tamas Nepusz Date: Sun, 2 Oct 2016 18:44:23 +0200 X-Google-Sender-Auth: NhlZeyyvApmVqR6rtdmgx-4Vr9g Message-ID: To: Help for igraph users Content-Type: text/plain; charset=UTF-8 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4001:c06::234 Subject: Re: [igraph] Extra arguments in make_graph X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Sun, 02 Oct 2016 16:44:28 -0000 Just use make_graph(el, n = vcount(graph), directed=TRUE) instead. T. On Thu, Sep 29, 2016 at 4:19 PM, Ragia . wrote: > Hi, > > I' m trying to use the answer in > > > http://stackoverflow.com/questions/9705035/how-to-copy-a-vertex-with-its-respective-edges-all-in-out-from-a-directed-gra/39772710#39772710 > > > trying to create exact copy of a graph > > my graph object name is : graph > > and it works fine till I reach the contraction phase > > > > all.vertices <- (1:vcount(graph)) - 1 > es <- E(graph) #[ sampled %--% 1:n ] > el <- get.edgelist(graph)[as.vector(es)+1] > > reachabelGraph1 <- graph(el, vcount(graph), directed = TRUE) > > I got he Error "Extra arguments in make_graph" > > > kindly, how can I fix this? > > > thanks in advance > > Ragia A. Ibrahim > > > > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help > From MAILER-DAEMON Mon Oct 03 06:29:15 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1br0Ul-0006tr-5F for mharc-igraph-help@gnu.org; Mon, 03 Oct 2016 06:29:15 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:49604) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1br0Uj-0006tk-Nw for igraph-help@nongnu.org; Mon, 03 Oct 2016 06:29:14 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1br0Uh-0000E2-Sv for igraph-help@nongnu.org; Mon, 03 Oct 2016 06:29:12 -0400 Received: from mail-lf0-x231.google.com ([2a00:1450:4010:c07::231]:33623) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1br0Uh-0000DI-Ku for igraph-help@nongnu.org; Mon, 03 Oct 2016 06:29:11 -0400 Received: by mail-lf0-x231.google.com with SMTP id t81so83244955lfe.0 for ; Mon, 03 Oct 2016 03:29:09 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:from:date:message-id:subject:to; bh=ol89tDDm13O+ndu+vqLv5eXwpbRUM2NI3B1caaph1o0=; b=DW56t1/i0rnsFb7BmGCQX/y4sfM0YfE8lGzEDMXjy2561XgLF4HWIxwALFzJ2ZcgXk NLG6Qy1r4ELB/CV4zHqKAE4vqnFTvG3TA9Ac/IhwWOVQQjqOdqDfUf91f31kNleO8QNp PoR/0DdkrCe7bLPbuKf1GMq4PPta4PF7f7nysUvDfui7cE9S/tkH6q0/tAYIfW1mP5+X 6/fJih7yCLkk2bu/RsGjdmNtBIEeW8fJJt0RiVmjms5tvFTVIQgHMtnXKEulCpRMaLPc v2AcuehapIEchYAHzQWmrKDAJx+vpzXYG6thVoxArqf9+XUZsNlpoDcBIMB1Tz/vZniX Vk6A== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:from:date:message-id:subject:to; bh=ol89tDDm13O+ndu+vqLv5eXwpbRUM2NI3B1caaph1o0=; b=fF05PWhOxwzoJinBFde3f86+2twnQldgNDubSfl2qSJ4Uz5tI8tgr+gfHWQR4LNRKa WbQjRFml3rSTqweLq3Filz8W4V0148Fl7y3bgemYnKEaw4T6zZF/gKmT9XYrbSQJgWRD gAsjFIZ2KpjOlSSbmx0RvnIKcIacpZM7v0ZXTQAxxE84xB++GOL33SJdOlr2Te7Of2Ck HyqWxvCIOB0JCBDAbnxVYdQgmbgdN8M2tSyTa3n7M0WwgZ4hRP2P4oxRhdSzEAzUXzPm yHWeiWqrE4Fad2Cd1IQmkrxF1C0tsqa6oII0McXSZT46FzbH39g2mnN7+r/mxao6FpmB I5Gw== X-Gm-Message-State: AA6/9Rkr2eWmgirlZVcnuPNWl5Nhb7CzgBSgtEKMk/m3absc80vCnJ5NHvFgHw17nrGhpSkYEAydS/AeMD26uQ== X-Received: by 10.25.1.136 with SMTP id 130mr7596787lfb.123.1475490548825; Mon, 03 Oct 2016 03:29:08 -0700 (PDT) MIME-Version: 1.0 Received: by 10.25.155.2 with HTTP; Mon, 3 Oct 2016 03:28:48 -0700 (PDT) From: =?UTF-8?Q?Szabolcs_Horv=C3=A1t?= Date: Mon, 3 Oct 2016 12:28:48 +0200 Message-ID: To: Help for igraph users Content-Type: text/plain; charset=UTF-8 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2a00:1450:4010:c07::231 Subject: [igraph] looking for cool examples of using igraph X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Mon, 03 Oct 2016 10:29:14 -0000 Hi everyone, I am looking for "cool" examples to show off the capabilities of igraph, especially to people who are not deeply familiar with graph theory. I am in particular looking for examples that utilize the more unique features of igraph rather than standard stuff that all graph handling packages have: coloured graph isomorphism, subgraph finding (motifs, LAD), community finding (igraph excels here), feedback arc set, etc. The best examples would be problems that don't look like graph theory on the surface yet can be mapped to the kinds of graph-related problems for which igraph already has a solution. One example that I am going to use is mapping polyomino tiling into clique finding. But generally anything that has the potential to look stunning with relatively little explanation is useful. Visualizations of polynomios look stunning and the tiling problem can be explained in a minute to anyone without much of a math background. Szabolcs From MAILER-DAEMON Thu Oct 06 03:33:04 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bs3At-0004S8-V3 for mharc-igraph-help@gnu.org; Thu, 06 Oct 2016 03:33:03 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:39235) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bs3As-0004Rw-2R for igraph-help@nongnu.org; Thu, 06 Oct 2016 03:33:02 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bs3Ar-0006Ot-3X for igraph-help@nongnu.org; Thu, 06 Oct 2016 03:33:01 -0400 Received: from mail-wm0-x234.google.com ([2a00:1450:400c:c09::234]:38406) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bs3Aq-0006Oj-TX for igraph-help@nongnu.org; Thu, 06 Oct 2016 03:33:01 -0400 Received: by mail-wm0-x234.google.com with SMTP id p138so27762086wmb.1 for ; Thu, 06 Oct 2016 00:33:00 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:in-reply-to:references:from:date:message-id:subject:to; bh=zKgBb7/F+fxGjv+49NuAalOC7Rmym2NNovZwkoAFqP0=; b=u6CCXEuy3tuBO/b6u6BblLxtZHrnL/QMdi8c/mceqs+PKdIPlCxTMFTj+O8ySrLMkh pBdrf2CKwkDAVyXY+r6jf/1twN67rQuZo4TwWwl45C3t1HyDUvUNSUs5p693LbiaLE37 eNRwTM3CuJLborOUE/MIieBcw6h/+AcVNLR8ZK+iTXtjnAZQ2M69RcQ4AyzAj+bmcV0P fB2xAmh3ZFnQL3t/0MTGIrVevBd/k4H+ksK/pFcmOkNdqeK80eBGzZqHfOPthoyxipwg srBufrcYgiqSrlCm4JDj1GJST3rf39MHlnsqzDM0J3fFFhomeM8i94PvueloMSd6CSfv wsvw== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:in-reply-to:references:from:date :message-id:subject:to; bh=zKgBb7/F+fxGjv+49NuAalOC7Rmym2NNovZwkoAFqP0=; b=cLcA9WCP3Ru3QFplpISPmalLcXWPu68XBTGIhdGtFBOjli5ugVoQwCx5FBDShBhTyZ KtJ6iIjzxlFV1dYkS2IEcksFJUHrsYJld2jpuT5rlT1CKbRkr5z3rjpbQqpwEQ/dkv+S dt/UlhG1g5hA5p5nJx7rjKudASeOV8P/odJQOvsQFs93Cqvyzgm4efOHgRNV0i0jttHN ZYSxpGcOjt65Rq+o2YIaEO6c0nMjwsVvjG4YemfsczV2ak3kt4Xqq5dixMZKJjbp2rRe saLg7gPiyW4Avcf6jjCb4kn7nNmL+yyzeYX6L6u/B2sGKdW7OOdst6teQLku82VNcz+Y VKYQ== X-Gm-Message-State: AA6/9RlyX3d17lQ8pLy06YdDbKkZ94aiNwqplB/jeizSeS9N1QlcKIqLW87D5F8qhOgitUq8DT0C3JRLG/hKOw== X-Received: by 10.194.119.100 with SMTP id kt4mr10751540wjb.84.1475739179373; Thu, 06 Oct 2016 00:32:59 -0700 (PDT) MIME-Version: 1.0 Received: by 10.194.16.134 with HTTP; Thu, 6 Oct 2016 00:32:58 -0700 (PDT) Received: by 10.194.16.134 with HTTP; Thu, 6 Oct 2016 00:32:58 -0700 (PDT) In-Reply-To: References: From: Kuu Date: Thu, 6 Oct 2016 09:32:58 +0200 Message-ID: To: Help for igraph users Content-Type: multipart/alternative; boundary=089e011602e8915add053e2d4d79 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2a00:1450:400c:c09::234 Subject: [igraph] Merging two graphs X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Thu, 06 Oct 2016 07:33:03 -0000 --089e011602e8915add053e2d4d79 Content-Type: text/plain; charset=UTF-8 Hello! I have two graphs and each of them have vertices with the "id" attribute. I want to merge both of them by this attribute but I cannot find a method for doing so (I'm on Python btw). I saw union and compose methods, but they seem to join vertices by index, I'm not sure about this as it is not explained in the docs, but my tests seem to point that. So my questions: how do compose/union methods work? Is there a way of doing the merge by id/name attribute instead of the vertex index? Thank you Regards, Javier --089e011602e8915add053e2d4d79 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable

Hello!

I have two graphs and each of them have vertices with the &q= uot;id" attribute.

I want to merge both of them by this attribute but I cannot = find a method for doing so (I'm on Python btw). I saw union and compose= methods, but they seem to join vertices by index, I'm not sure about t= his as it is not explained in the docs, but my tests seem to point that.

So my questions: how do compose/union methods work?=C2=A0 Is= there a way of doing the merge by id/name attribute instead of the vertex = index?

Thank you

Regards,
Javier

--089e011602e8915add053e2d4d79-- From MAILER-DAEMON Thu Oct 06 05:16:49 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bs4nJ-0004Y7-EG for mharc-igraph-help@gnu.org; Thu, 06 Oct 2016 05:16:49 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:35901) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bs4nG-0004XM-Nk for igraph-help@nongnu.org; Thu, 06 Oct 2016 05:16:48 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bs4nF-0002xr-8W for igraph-help@nongnu.org; Thu, 06 Oct 2016 05:16:46 -0400 Received: from mail-io0-x230.google.com ([2607:f8b0:4001:c06::230]:32821) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bs4nF-0002xZ-1O for igraph-help@nongnu.org; Thu, 06 Oct 2016 05:16:45 -0400 Received: by mail-io0-x230.google.com with SMTP id q192so9279784iod.0 for ; Thu, 06 Oct 2016 02:16:44 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:sender:in-reply-to:references:from:date:message-id :subject:to; bh=5SILOPyiw2hww8lAgyZHNa8Me1kvNyBzH1vUA5biOCo=; b=R5H/N28jp0XjZ98nPIzw4scnJrheEq6viav4O3w5ws8KSBYWy6cSqgPXPxDY9FrHF3 vbz1SPiPzdVVVYKU2vjcu+X5emDQgZZV+q4NPiAxXe9VKof9tT6AFNXshIaUdVPBJc3A KWWvesP9dhhHEbOb3fmVyAoptu9VDc+/6qNfukZ0nHEUYSjjdcHvwdy7pmt3FMTsUqEg 89DZqufNGbOg/j9hhh3ajh1GHGq5Gbp6hEG3MozsFDd2UfaSOZr7/nKOrUHzqUnZgYHy 0KlmOPD1JFI3AWjjuCfPertGJHaHRotAAjiO0n+mt/CZheW/EOfxX1FrGAto2SM0+OJx 3NOw== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:sender:in-reply-to:references:from :date:message-id:subject:to; bh=5SILOPyiw2hww8lAgyZHNa8Me1kvNyBzH1vUA5biOCo=; b=Xnwv/JVTdaP7KoqEHkeD0d3JjpK7ntUsz42yiR3lKHiVcAlXyTPT/OMBYzRS4r6qso njkn30QWaOgk7VMW3VoVCnjNdPui5+NS862/rOh5HyXeNLgY0uyrKQs6A5eoyA/Umq7r jeOEHWIvfRGJ/I9SkWKIURGD35ig3mKPEhaplI+e0sUKRVgyZAyT5lpZyuENoUXFGh6K ABh56/fsDjwqRxxMnmoB5vG8FoGtwU38A/vo9qoosn98rHgf8NXNcO6AN0NFxGtfK5IM KMhJpEGeu05E33O2m/I4WkiR/NImRuJZAJ9e6JdU2zIZlnTA6HIGMZ0jtE/qHsl5rVFD I+cg== X-Gm-Message-State: AA6/9RmFJbuTr0oNu9fj6829ljW9Mm8SEYGn6ROV5CtUQcHWSNqJPhVIDLHq/iXdo546KC64kHWaK9LqFEmj7w== X-Received: by 10.107.142.78 with SMTP id q75mr14131330iod.4.1475745404097; Thu, 06 Oct 2016 02:16:44 -0700 (PDT) MIME-Version: 1.0 Sender: ntamas@gmail.com Received: by 10.107.143.23 with HTTP; Thu, 6 Oct 2016 02:16:43 -0700 (PDT) In-Reply-To: References: From: Tamas Nepusz Date: Thu, 6 Oct 2016 11:16:43 +0200 X-Google-Sender-Auth: LKGCrDan9434tL788tNkd5s_I8k Message-ID: To: Help for igraph users Content-Type: multipart/mixed; boundary=94eb2c05af709738e8053e2ec0f4 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4001:c06::230 Subject: Re: [igraph] Merging two graphs X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Thu, 06 Oct 2016 09:16:48 -0000 --94eb2c05af709738e8053e2ec0f4 Content-Type: text/plain; charset=UTF-8 Hello! Unfortunately the Python interface is currently lacking such a function, but you can work around this if the graphs involved have the same number of vertices. Basically, what you need to do is to use the permute_vertices() method on one of your graphs and permute its vertices such that the IDs will be in the same order as in the original graph, then use union(). If the ID sets of the two graphs are different (i.e. only partially overlapping), then it is a bit more complicated because first you need to extend both graphs with isolated vertices corresponding to the "missing" IDs so they have the same ID set, and then call permute_vertices() on one of them, and then finally call union(). Attached is a Python script containing a union_by_attr() function that does what you probably need. It is incomplete because it does not copy any other attributes from the original graphs to the union (i.e. attributes are lost because union() does not support attribute unification yet). Copying the vertex attributes should be straightforward, though. T. On Thu, Oct 6, 2016 at 9:32 AM, Kuu wrote: > Hello! > > I have two graphs and each of them have vertices with the "id" attribute. > > I want to merge both of them by this attribute but I cannot find a method > for doing so (I'm on Python btw). I saw union and compose methods, but they > seem to join vertices by index, I'm not sure about this as it is not > explained in the docs, but my tests seem to point that. > > So my questions: how do compose/union methods work? Is there a way of doing > the merge by id/name attribute instead of the vertex index? > > Thank you > > Regards, > Javier > > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help > --94eb2c05af709738e8053e2ec0f4 Content-Type: text/x-python-script; charset=US-ASCII; name="merge_graphs.py" Content-Disposition: attachment; filename="merge_graphs.py" Content-Transfer-Encoding: base64 X-Attachment-Id: f_ity4qpwi0 IyEvdXNyL2Jpbi9lbnYgcHl0aG9uCgpmcm9tIGlncmFwaCBpbXBvcnQgR3JhcGgKCgpkZWYgdW5p ZnlfdmVydGV4X2lkcyhnMSwgZzIsIGF0dHIpOgogICAgIiIiR2l2ZW4gdHdvIGdyYXBocyBnMSBh bmQgZzIsIGV4dGVuZHMgdGhlbSB3aXRoIGlzb2xhdGVkIHZlcnRpY2VzIGFuZAogICAgcGVybXV0 ZXMgdGhlIHZlcnRpY2VzIG9mIGcyIHRvIGVuc3VyZSB0aGF0IGJvdGggZ3JhcGhzIGhhdmUgdGhl IHNhbWUKICAgIHZlcnRleCBJRCBzZXQgaW4gdGhlIHNhbWUgb3JkZXIsIGFzc3VtaW5nIHRoYXQg dGhlIHZlcnRleCBhdHRyaWJ1dGUKICAgIG5hbWVkIGBgYXR0cmBgIHN0b3JlcyB0aGUgdmVydGV4 IElEcy4KICAgICIiIgogICAgaWRzMSwgaWRzMiA9IGcxLnZzW2F0dHJdLCBnMi52c1thdHRyXQog ICAgYXNzZXJ0IGxlbihzZXQoaWRzMSkpID09IGxlbihpZHMxKSwgIlZlcnRleCBJRHMgaW4gZzEg bXVzdCBiZSB1bmlxdWUiCiAgICBhc3NlcnQgbGVuKHNldChpZHMyKSkgPT0gbGVuKGlkczIpLCAi VmVydGV4IElEcyBpbiBnMiBtdXN0IGJlIHVuaXF1ZSIKICAgIGlkc19taXNzaW5nX2Zyb21fZzEg PSBzb3J0ZWQoc2V0KGlkczIpIC0gc2V0KGlkczEpKQogICAgaWRzX21pc3NpbmdfZnJvbV9nMiA9 IHNvcnRlZChzZXQoaWRzMSkgLSBzZXQoaWRzMikpCiAgICBpZiBpZHNfbWlzc2luZ19mcm9tX2cx OgogICAgICAgIGcxID0gZzEuY29weSgpCiAgICAgICAgbjEgPSBnMS52Y291bnQoKQogICAgICAg IGcxLmFkZF92ZXJ0aWNlcyhsZW4oaWRzX21pc3NpbmdfZnJvbV9nMSkpCiAgICAgICAgZzEudnNb bjE6XVthdHRyXSA9IGlkc19taXNzaW5nX2Zyb21fZzEKICAgIGlmIGlkc19taXNzaW5nX2Zyb21f ZzI6CiAgICAgICAgZzIgPSBnMi5jb3B5KCkKICAgICAgICBuMiA9IGcyLnZjb3VudCgpCiAgICAg ICAgZzIuYWRkX3ZlcnRpY2VzKGxlbihpZHNfbWlzc2luZ19mcm9tX2cyKSkKICAgICAgICBnMi52 c1tuMjpdW2F0dHJdID0gaWRzX21pc3NpbmdfZnJvbV9nMgogICAgcmV2ZXJzZV9pbmRleCA9IGRp Y3QoKHYsIGspIGZvciBrLCB2IGluIGVudW1lcmF0ZShnMS52c1thdHRyXSkpCiAgICBwZXJtdXRh dGlvbl92ZWN0b3IgPSBbcmV2ZXJzZV9pbmRleFtpZF0gZm9yIGlkIGluIGcyLnZzW2F0dHJdXQog ICAgZzIgPSBnMi5wZXJtdXRlX3ZlcnRpY2VzKHBlcm11dGF0aW9uX3ZlY3RvcikKICAgIHJldHVy biBnMSwgZzIKCgpkZWYgdW5pb25fYnlfYXR0cihnMSwgZzIsIGF0dHIpOgogICAgIiIiVGFrZXMg dGhlIHVuaW9uIG9mIHR3byBncmFwaHMgZzEgYW5kIGcyIGJhc2VkIG9uIHRoZSBnaXZlbiB2ZXJ0 ZXgKICAgIGF0dHJpYnV0ZS4KICAgICIiIgogICAgZzEsIGcyID0gdW5pZnlfdmVydGV4X2lkcyhn MSwgZzIsIGF0dHIpCiAgICByZXN1bHQgPSBnMS51bmlvbihnMikKICAgIHJlc3VsdC52c1thdHRy XSA9IGcxLnZzW2F0dHJdCiAgICByZXR1cm4gcmVzdWx0CgoKZzEgPSBHcmFwaC5HUkcoMTAwLCAw LjIpCmcxLnZzWyJpZCJdID0gW2kgKiAzIGZvciBpIGluIHhyYW5nZSgxMDApXQoKZzIgPSBHcmFw aC5HUkcoMTAwLCAwLjIpCmcyLnZzWyJpZCJdID0gW2kgKiA1IGZvciBpIGluIHhyYW5nZSgxMDAp XQoKbWVyZ2VkX2dyYXBoID0gdW5pb25fYnlfYXR0cihnMSwgZzIsICJpZCIpCnByaW50KG1lcmdl ZF9ncmFwaC52c1siaWQiXSk= --94eb2c05af709738e8053e2ec0f4-- From MAILER-DAEMON Thu Oct 06 06:46:35 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bs6CB-0001DO-3J for mharc-igraph-help@gnu.org; Thu, 06 Oct 2016 06:46:35 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:57963) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bs6C8-0001Bf-Bm for igraph-help@nongnu.org; Thu, 06 Oct 2016 06:46:33 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bs6C6-0001lZ-Py for igraph-help@nongnu.org; Thu, 06 Oct 2016 06:46:32 -0400 Received: from mail-wm0-x235.google.com ([2a00:1450:400c:c09::235]:38592) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bs6C6-0001lP-Ea for igraph-help@nongnu.org; Thu, 06 Oct 2016 06:46:30 -0400 Received: by mail-wm0-x235.google.com with SMTP id p138so37001301wmb.1 for ; Thu, 06 Oct 2016 03:46:30 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:in-reply-to:references:from:date:message-id:subject:to; bh=gujQ2hJDLCulx8eTQHX4RxW80u7vzt++2c2uqN5wCMo=; b=Xm7tLelL4m9A7RaKEySW/p5ug+d0TJ+q8NhydEnmOi+rL/3dHmbY5YF6kSpOOIRSJA j1EDjtKa/ziomseFNKEdSsIDsi8aq4WdtDOZrY6rDBUzStEYD91NBtmCCeE0O+Dc+jM3 +CNxCzOJGHfr/AvzDx6th2pt63O5Yj2o0KZFEQDODLTJkN2OmZ/ZtenXL2KQKoBPrb7J aNiJpuZrT97HqPwlsfpQLNWBvWfWVcKQAK57FhdYrP3I5VMYVcgyn3HynSEb7TMWnFhG aU3SRslS2mynLiHh0cnXa9LIUZEXAtYqoS3F5S4OEx0K6Xnxiy2wet+6+YGWVxmV3ZI9 kciw== X-Google-DKIM-Signature: v=1; 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boundary=047d7ba973048e456d053e30013b X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2a00:1450:400c:c09::235 Subject: Re: [igraph] Merging two graphs X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Thu, 06 Oct 2016 10:46:33 -0000 --047d7ba973048e456d053e30013b Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable Thanks for the fast answer and the code, it really helped. El 6 oct. 2016 11:16, "Tamas Nepusz" escribi=C3=B3: > Hello! > > Unfortunately the Python interface is currently lacking such a > function, but you can work around this if the graphs involved have the > same number of vertices. Basically, what you need to do is to use the > permute_vertices() method on one of your graphs and permute its > vertices such that the IDs will be in the same order as in the > original graph, then use union(). If the ID sets of the two graphs are > different (i.e. only partially overlapping), then it is a bit more > complicated because first you need to extend both graphs with isolated > vertices corresponding to the "missing" IDs so they have the same ID > set, and then call permute_vertices() on one of them, and then finally > call union(). > > Attached is a Python script containing a union_by_attr() function that > does what you probably need. It is incomplete because it does not copy > any other attributes from the original graphs to the union (i.e. > attributes are lost because union() does not support attribute > unification yet). Copying the vertex attributes should be > straightforward, though. > > T. > > > On Thu, Oct 6, 2016 at 9:32 AM, Kuu wrote: > > Hello! > > > > I have two graphs and each of them have vertices with the "id" attribut= e. > > > > I want to merge both of them by this attribute but I cannot find a meth= od > > for doing so (I'm on Python btw). I saw union and compose methods, but > they > > seem to join vertices by index, I'm not sure about this as it is not > > explained in the docs, but my tests seem to point that. > > > > So my questions: how do compose/union methods work? Is there a way of > doing > > the merge by id/name attribute instead of the vertex index? > > > > Thank you > > > > Regards, > > Javier > > > > > > _______________________________________________ > > igraph-help mailing list > > igraph-help@nongnu.org > > https://lists.nongnu.org/mailman/listinfo/igraph-help > > > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help > > --047d7ba973048e456d053e30013b Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable

Thanks for the fast answer and the code, it really helped.


El 6 oct. 2016 11= :16, "Tamas Nepusz" <nt= amas@rmki.kfki.hu> escribi=C3=B3:
Hello!

Unfortunately the Python interface is currently lacking such a
function, but you can work around this if the graphs involved have the
same number of vertices. Basically, what you need to do is to use the
permute_vertices() method on one of your graphs and permute its
vertices such that the IDs will be in the same order as in the
original graph, then use union(). If the ID sets of the two graphs are
different (i.e. only partially overlapping), then it is a bit more
complicated because first you need to extend both graphs with isolated
vertices corresponding to the "missing" IDs so they have the same= ID
set, and then call permute_vertices() on one of them, and then finally
call union().

Attached is a Python script containing a union_by_attr() function that
does what you probably need. It is incomplete because it does not copy
any other attributes from the original graphs to the union (i.e.
attributes are lost because union() does not support attribute
unification yet). Copying the vertex attributes should be
straightforward, though.

T.


On Thu, Oct 6, 2016 at 9:32 AM, Kuu <kuu.kuu@gmail.com> wrote:
> Hello!
>
> I have two graphs and each of them have vertices with the "id&quo= t; attribute.
>
> I want to merge both of them by this attribute but I cannot find a met= hod
> for doing so (I'm on Python btw). I saw union and compose methods,= but they
> seem to join vertices by index, I'm not sure about this as it is n= ot
> explained in the docs, but my tests seem to point that.
>
> So my questions: how do compose/union methods work?=C2=A0 Is there a w= ay of doing
> the merge by id/name attribute instead of the vertex index?
>
> Thank you
>
> Regards,
> Javier
>
>
> _______________________________________________
> igraph-help mailing list
> igraph-help@nongnu.org > https://lists.nongnu.org/mailman/lis= tinfo/igraph-help
>

_______________________________________________
igraph-help mailing list
igraph-help@nongnu.org
https://lists.nongnu.org/mailman/listinfo/= igraph-help

--047d7ba973048e456d053e30013b-- From MAILER-DAEMON Fri Oct 07 16:28:01 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bsbkP-0000AG-JR for mharc-igraph-help@gnu.org; Fri, 07 Oct 2016 16:28:01 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:50282) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bsbkN-00007g-7R for igraph-help@nongnu.org; Fri, 07 Oct 2016 16:28:00 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bsbkL-0001T9-5D for igraph-help@nongnu.org; Fri, 07 Oct 2016 16:27:58 -0400 Received: from mail-qk0-x236.google.com ([2607:f8b0:400d:c09::236]:34997) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bsbkL-0001RL-0h for igraph-help@nongnu.org; Fri, 07 Oct 2016 16:27:57 -0400 Received: by mail-qk0-x236.google.com with SMTP id z190so40584153qkc.2 for ; Fri, 07 Oct 2016 13:27:55 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:reply-to:from:date:message-id:subject:to; bh=/NfTUAp9235sNaLorVIlTL9Xvf0t2Doc56mAiHxZeeM=; b=NEiaVxP47AMT7AatCTv2pFxenAyUWaYWLpzW0unFrgirE5SQ5CA7UlC4fj+7lko7R5 N/96Gb7lCTvBXbmH+DLjjXo5iVRSnuFMFVvENpp68sS3PkqKWa+TlqpsDt9MLUHOFquE Ncwbbg3HbM5Keq+uA2MqCRyz9kVBy29lUJsEingc8GXjvC9VvI1PCTcu0ZNfuq6vZ4ZN Y7ZiE8Zb4cdLpmOnYzdRacuw/kFXLDAKJTT6EhwzGsXxsvYPCWde5qy0PrihAe4thdy/ hhgxDmXiooEWEkQ2Q3/A8gMVMew8s6LNIXKdAMJVHPCCxMcmqwGsjsWLbFdlMPZwjVnh NaQw== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:reply-to:from:date:message-id :subject:to; bh=/NfTUAp9235sNaLorVIlTL9Xvf0t2Doc56mAiHxZeeM=; b=G91bvpkixIb7G1+pPGvDUAg+u+yEZJ0tj55EYm9cGiNjQP5T8W5TO7HO7tinQ5BGfw W6akOeALQqfUqP+PQtCxKxrbDjUS+A8RCJu5dZRdbkYdiYXNLMccWe5VLzXMq3mewaNV 6zrm5cbk5238sSWsQznezyS8cySh8lkhgD91rGZl+yU1nf1fI3j8AWl64h1O1Qgtfkxe fNQmL6/P2jHoKbo2OhBugWAIbGp65BW3n990cIhCtwFdHwAV2yc9KvGUi50WvYByz/UG oPOsjFMGmr8hbw9eLbPQpwOqdvemgTqug/PsBQjWO1Yxm73aWlQqs7ktM1GeRcAD84XB lP1w== X-Gm-Message-State: AA6/9RnQuhb/BVdeqc3rYga5SZI9aPbgEHBB++1wF8Jj1Wre7fzO81cUtuY7dpjxybfBZxHlsZOymti+uJzEKQ== X-Received: by 10.55.108.194 with SMTP id h185mr20850593qkc.37.1475872074947; Fri, 07 Oct 2016 13:27:54 -0700 (PDT) MIME-Version: 1.0 Received: by 10.55.165.67 with HTTP; Fri, 7 Oct 2016 13:27:14 -0700 (PDT) Reply-To: ahmed.elmasri@gmail.com From: Ahmed Abdeen Hamed Date: Fri, 7 Oct 2016 16:27:14 -0400 Message-ID: To: Help for igraph users Content-Type: multipart/alternative; boundary=001a11487766c2e664053e4c3e63 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:400d:c09::236 Subject: [igraph] Measuring the density of indepenent layers in a multilayered network X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 07 Oct 2016 20:28:00 -0000 --001a11487766c2e664053e4c3e63 Content-Type: text/plain; charset=UTF-8 Hello friends, In a multilayered network, would it be possible to measure the density of the independent layers? Layers are identified by a label so it can be retrieved from the main graph. Please feel free to share with me some code examples. Thanks so much and have a great weekend, -Ahmed --001a11487766c2e664053e4c3e63 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
Hello friends,

In a multilayered networ= k, would it be possible to measure the density of the independent layers? L= ayers are identified by a label so it can be retrieved from the main graph.= Please feel free to share with me some code examples.=C2=A0

=
Thanks so much and have a great weekend,

-Ahmed
--001a11487766c2e664053e4c3e63-- From MAILER-DAEMON Fri Oct 07 17:01:57 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bscHF-00014Y-Np for mharc-igraph-help@gnu.org; Fri, 07 Oct 2016 17:01:57 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:60011) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bscHD-00014M-Iu for igraph-help@nongnu.org; Fri, 07 Oct 2016 17:01:56 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bscHC-0007As-1O for igraph-help@nongnu.org; Fri, 07 Oct 2016 17:01:55 -0400 Received: from mail-it0-x22b.google.com ([2607:f8b0:4001:c0b::22b]:37158) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bscHB-0007Ad-Rq for igraph-help@nongnu.org; Fri, 07 Oct 2016 17:01:53 -0400 Received: by mail-it0-x22b.google.com with SMTP id z65so19245934itc.0 for ; Fri, 07 Oct 2016 14:01:53 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:sender:in-reply-to:references:from:date:message-id :subject:to; bh=gMGvlpKMnoKdsON+IKFjsMzaNtXUnF4GrK+0ffQwZMA=; b=okJ8AfQPZ0/eEFFj3SPvl1eYpurJRkfmnuficngQjff2fo7q9mZqJDqqCzbcmDdxXP B/jGqcbuyxnnLeSdM3SXfCg80izSPdO1tj4xdLC97erTaUQykFs+FFBDveY+84UFv9HU RWbY3ahYxVxLTsekcEiPjo7aivSOwAgzIaECLjpWtur81i72ObZ1mHFvIexkUZLl4iFC xxE2bl5qLgAXtbXzdTu1NNLr/xN4dEShjVxux4YfSpuz8x3N5esK5nTwp5f7WeD5/644 Qfjyiv74Dtz/9jAM/wKRJa9rKNu+wFUmVQiMa2B2lJQC1xYYfEOr85Uoi3xcMB/ieMuy /CiA== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:sender:in-reply-to:references:from :date:message-id:subject:to; bh=gMGvlpKMnoKdsON+IKFjsMzaNtXUnF4GrK+0ffQwZMA=; b=JPmfkv9lCi3b784tGbwHtAjaXS0125LkOGXSOyBqSYVNvWhfu4bYD1p7N7pSaN6mPn DNXFP5ILZqQBW4FMETF7b2d3vBIG67tMHXD3UqL/jJRlfmEasjh5pX9uIjtLmtFnVeId U2XsY/Kp+0wZhT72giP3pXzN0b+oalUOAwPQCPa6k0IUksGEyEPuCphKfX0jL2kJmB0P qRm76nJApJ5Q0HLJE6qOzYrC5W/sZ48zpyy2M963TYgYdhWZ0PkEdTTPW560saax/2pB RKaWTPoyc5c7K0kTjtjJQdx9nkYUUj+87gy9UdAMIotrWVZsV5FQBX1Uy5t7eHlzV6+k TJTg== X-Gm-Message-State: AA6/9Rl2n5ACLTqO1f5IH6mHkBlGpg826JSAPr0zCP0gduR+pDl3mqEwNAFKbnHoq/ts8wlyxt7fOBIC4efVXw== X-Received: by 10.36.238.134 with SMTP id b128mr700970iti.72.1475874113101; Fri, 07 Oct 2016 14:01:53 -0700 (PDT) MIME-Version: 1.0 Sender: ntamas@gmail.com Received: by 10.107.46.32 with HTTP; Fri, 7 Oct 2016 14:01:52 -0700 (PDT) In-Reply-To: References: From: Tamas Nepusz Date: Fri, 7 Oct 2016 23:01:52 +0200 X-Google-Sender-Auth: xwCMyZfyXtOAEm81EEByeXI9szk Message-ID: To: Ahmed Abdeen Hamed , Help for igraph users Content-Type: text/plain; charset=UTF-8 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4001:c0b::22b Subject: Re: [igraph] Measuring the density of indepenent layers in a multilayered network X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 07 Oct 2016 21:01:56 -0000 Hello, The easiest (and probably not the most efficient) way is to take the induced subgraph of all the vertices in a layer and then call density() on the induced subgraph. However, if you want the density of all the layers at once, there is a better option: 1. Take the edge list of the graph 2. Re-map each vertex index in the edge list to its layer index 3. Create a table where the i-th row and the j-th column contains the number of edges between layers i and j 4. Take the diagonal of the table 5. Count how many vertices there are in each of the layers 6. Count how many edges there could be in each of the layers if the layer was completely full 7. Divide the vector in step 4 by the vector in step 6, elementwise. E.g. (in R): > g <- grg.game(100, 0.2) > V(g)$layer <- sample.int(5, vcount(g), replace=T) > layers_of_edges <- matrix(V(g)$layer[get.edgelist(g)], ncol=2, byrow=F) > edge_counts_in_layers <- diag(table(layers_of_edges[,1], layers_of_edges[,2])) > layer_sizes <- table(V(g)$layer) > edge_counts_in_layers / (layer_sizes * (layer_sizes-1) / 2) T. On Fri, Oct 7, 2016 at 10:27 PM, Ahmed Abdeen Hamed wrote: > Hello friends, > > In a multilayered network, would it be possible to measure the density of > the independent layers? Layers are identified by a label so it can be > retrieved from the main graph. Please feel free to share with me some code > examples. > > Thanks so much and have a great weekend, > > -Ahmed > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help > From MAILER-DAEMON Mon Oct 10 15:22:45 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1btg9t-0002EL-LG for mharc-igraph-help@gnu.org; Mon, 10 Oct 2016 15:22:45 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:51575) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1btg9r-0002DB-G1 for igraph-help@nongnu.org; Mon, 10 Oct 2016 15:22:44 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1btg9p-0005YQ-Rq for igraph-help@nongnu.org; Mon, 10 Oct 2016 15:22:43 -0400 Received: from mail-qt0-x231.google.com ([2607:f8b0:400d:c0d::231]:34756) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1btg9p-0005XZ-La for igraph-help@nongnu.org; Mon, 10 Oct 2016 15:22:41 -0400 Received: by mail-qt0-x231.google.com with SMTP id q7so64545644qtq.1 for ; Mon, 10 Oct 2016 12:22:40 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:reply-to:in-reply-to:references:from:date:message-id :subject:to:cc; bh=pE/ZvOM3YJZoFCeABGsRQefOQEywbZ6dxV8mAABjvaU=; b=k0AGcHM4YthgrslAQfvMb1mGzGAEsTbcwKlL4EoPdpEmNMfbbTHhqv5bmlUFs8SgUt vIPqP9Ld1bDGDZ7H2fJXM/AhXesvUXQFSbpcrD0qyI6sj1jA/P5Gj6yMom/MRQcQGY8o MvIBXG0BZ2jPScL4fqySr2voHmnjHPebQqLE0zxCnG5h+ibuaKZpLY917Fx2bqrr/QjG BumcvO+ANl1b7V9bciZcuDH7vyGqWkXiGzSaD5ksuUD4ZzIEDHSR3W462jN+VnnzkHYK m6h9UuqwsyOgshjElJg0hDUXVMRL74YXO4Y4fE9A3e5JSsF5mtPXZipr5GFZvqMrf5QD pI+A== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:reply-to:in-reply-to:references :from:date:message-id:subject:to:cc; bh=pE/ZvOM3YJZoFCeABGsRQefOQEywbZ6dxV8mAABjvaU=; b=BBEBPWUh5zycKJlH6/0z743VEFD/M/UdN5u7nszUNz6sh+2nggfqFD/8Ph6+yQkZwo 6J/NstLjFWKY+y8SMiAsGB0Jt0VakOr+s8iy7mqgVtggc94GZixk7SWRGS3dg9nSlFLo PMFq5zwXB42z8swVZg+cju12rUabieXEWyDxjcNCE2XuJI3ZoSDtOLxaZiGum7MZ4iB+ N9w8vDoM6QxUnVqcewhPm+cADEka5qPYiPIwpqXMjRUCOfhZ+vw2teFsA0k7Qb4TGclK qm+FSwY5jY0xk2Z6i8gFlJz0wNhwcrxDK2+G6BK8UvFKGMppikAU5pioSvvXPrK3oFnn MhJQ== X-Gm-Message-State: AA6/9Rlai8XT8BFKlPorz5TMiIBybaHIM/pI9K1kOtTTYIMldl7uCnRvp8tpd/zzcehDIMsaTKuKHv6JqLybvQ== X-Received: by 10.200.57.166 with SMTP id v35mr34749011qte.36.1476127359914; Mon, 10 Oct 2016 12:22:39 -0700 (PDT) MIME-Version: 1.0 Received: by 10.55.165.67 with HTTP; Mon, 10 Oct 2016 12:21:58 -0700 (PDT) Reply-To: ahmed.elmasri@gmail.com In-Reply-To: References: From: Ahmed Abdeen Hamed Date: Mon, 10 Oct 2016 15:21:58 -0400 Message-ID: To: Tamas Nepusz Cc: Help for igraph users Content-Type: multipart/alternative; boundary=94eb2c05fd0eee584f053e87aeb6 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:400d:c0d::231 Subject: Re: [igraph] Measuring the density of indepenent layers in a multilayered network X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Mon, 10 Oct 2016 19:22:45 -0000 --94eb2c05fd0eee584f053e87aeb6 Content-Type: text/plain; charset=UTF-8 This is such a generous help, Thank you! Please let me know if you require any specific citation/acknowledgement in the resulting publication. Best wishes, -Ahmed On Fri, Oct 7, 2016 at 5:01 PM, Tamas Nepusz wrote: > Hello, > > The easiest (and probably not the most efficient) way is to take the > induced subgraph of all the vertices in a layer and then call > density() on the induced subgraph. > > However, if you want the density of all the layers at once, there is a > better option: > > 1. Take the edge list of the graph > 2. Re-map each vertex index in the edge list to its layer index > 3. Create a table where the i-th row and the j-th column contains the > number of edges between layers i and j > 4. Take the diagonal of the table > 5. Count how many vertices there are in each of the layers > 6. Count how many edges there could be in each of the layers if the > layer was completely full > 7. Divide the vector in step 4 by the vector in step 6, elementwise. > > E.g. (in R): > > > g <- grg.game(100, 0.2) > > V(g)$layer <- sample.int(5, vcount(g), replace=T) > > layers_of_edges <- matrix(V(g)$layer[get.edgelist(g)], ncol=2, byrow=F) > > edge_counts_in_layers <- diag(table(layers_of_edges[,1], > layers_of_edges[,2])) > > layer_sizes <- table(V(g)$layer) > > edge_counts_in_layers / (layer_sizes * (layer_sizes-1) / 2) > > T. > > > On Fri, Oct 7, 2016 at 10:27 PM, Ahmed Abdeen Hamed > wrote: > > Hello friends, > > > > In a multilayered network, would it be possible to measure the density of > > the independent layers? Layers are identified by a label so it can be > > retrieved from the main graph. Please feel free to share with me some > code > > examples. > > > > Thanks so much and have a great weekend, > > > > -Ahmed > > > > _______________________________________________ > > igraph-help mailing list > > igraph-help@nongnu.org > > https://lists.nongnu.org/mailman/listinfo/igraph-help > > > --94eb2c05fd0eee584f053e87aeb6 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
This is such a generous help, Thank you!

Please let me know if you require any specific citation/acknowledgement i= n the resulting publication.

Best wishes,

=
-Ahmed


On Fri, Oct 7, 2016 at 5:01 PM, Tamas Nepu= sz <ntamas@rmki.kfki.hu> wrote:
Hello,

The easiest (and probably not the most efficient) way is to take the
induced subgraph of all the vertices in a layer and then call
density() on the induced subgraph.

However, if you want the density of all the layers at once, there is a
better option:

1. Take the edge list of the graph
2. Re-map each vertex index in the edge list to its layer index
3. Create a table where the i-th row and the j-th column contains the
number of edges between layers i and j
4. Take the diagonal of the table
5. Count how many vertices there are in each of the layers
6. Count how many edges there could be in each of the layers if the
layer was completely full
7. Divide the vector in step 4 by the vector in step 6, elementwise.

E.g. (in R):

> g <- grg.game(100, 0.2)
> V(g)$layer <- sample.int(5, vcount(g), replace=3DT)
> layers_of_edges <- matrix(V(g)$layer[get.edgelist(g)], ncol=3D= 2, byrow=3DF)
> edge_counts_in_layers <- diag(table(layers_of_edges[,1], layer= s_of_edges[,2]))
> layer_sizes <- table(V(g)$layer)
> edge_counts_in_layers / (layer_sizes * (layer_sizes-1) / 2)

T.


On Fri, Oct 7, 2016 at 10:27 PM, Ahmed Abdeen Hamed
<ahmed.elmasri@gmail.com&= gt; wrote:
> Hello friends,
>
> In a multilayered network, would it be possible to measure the density= of
> the independent layers? Layers are identified by a label so it can be<= br> > retrieved from the main graph. Please feel free to share with me some = code
> examples.
>
> Thanks so much and have a great weekend,
>
> -Ahmed
>
> _______________________________________________
> igraph-help mailing list
> igraph-help@nongnu.org > https://lists.nongnu.org/mailman/lis= tinfo/igraph-help
>

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Tue, 11 Oct 2016 11:10:10 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:60833) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1btygs-0000HV-Kr for igraph-help@nongnu.org; Tue, 11 Oct 2016 11:10:08 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1btygr-0000So-94 for igraph-help@nongnu.org; Tue, 11 Oct 2016 11:10:02 -0400 Received: from mail-it0-x235.google.com ([2607:f8b0:4001:c0b::235]:38022) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1btygr-0000SQ-3t for igraph-help@nongnu.org; Tue, 11 Oct 2016 11:10:01 -0400 Received: by mail-it0-x235.google.com with SMTP id o19so21995650ito.1 for ; Tue, 11 Oct 2016 08:10:00 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:sender:in-reply-to:references:from:date:message-id :subject:to:content-transfer-encoding; bh=ovcbwhB1S42vejEWhUZH9qIaE1fs1nJcibCLmUKTu+g=; b=PGz88Ewo+41I0Yzuzd3KZ/aJVQB6et762HDGIjy7sYDg3lxaDEiT8KN8YDnIu5k9mN HFTI/PY4TsYVbXp6AsaS2OzzBNKnR7ChDrXzYFsFJVdpdnmAkeOn6pj30uLFx9Lp4/zH rOrlxae8f1OPuWGvKSgA8gxG7PP0ydfter+1XEUZHHzV8TomlG/2h97h2U+zSYPUnIg0 qp8eYzneQoMe9Ikf4y45bKAAn0e/vEL0sBLJcZ8HLCr0HDtaMHDDTjRjqylgaW7ARatV YBGTKNuw5RtOcmesGa0sGO0cJ7Iy1zET6NeY1hVuhOEWgfDuNEM3OUONz4gVeGMmr5mE 1KWw== X-Google-DKIM-Signature: v=1; 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charset=UTF-8 Content-Transfer-Encoding: quoted-printable X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4001:c0b::235 Subject: Re: [igraph] listing edges connecting nodes with same attributes X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Tue, 11 Oct 2016 15:10:08 -0000 Hello, Use the "%--%" operator when indexing the edge sequence; see this page for more details (under the heading "Special functions"): http://igraph.org/r/doc/igraph-es-indexing.html Example: g <- grg.game(100, 0.2) V(g)$color <- c("red", "green") E(g)[V(g)$color =3D=3D "red" %--% V(g)$color =3D=3D "red"] This will give you all the edges between red nodes; you can then use length() to figure out how many such edges there are. T. On Tue, Oct 11, 2016 at 11:52 AM, Luca Rossi wrote: > Hello, > > I=E2=80=99m sure this is a very simple question but for some reason I can= =E2=80=99t figure out how to do it. > I need to list all the edges connecting nodes with a specific attribute. = (e.g. nodes can be =E2=80=9Cred=E2=80=9D or =E2=80=9Cgreen=E2=80=9D). So i = want to now how many dyads red-red, red-green, green-green. > I=E2=80=99ve tried with edge_connectivity but it doesn=E2=80=99t work whe= n source and target are the same node (as it happens in this case: > > edge_connectivity(g,source =3D V(g)[V(g)$color =3D=3D "green"],target = =3D V(g)[V(g)$color=3D=3D"green=E2=80=9D]) > > > is there any way to do this? > > Thank you ! > > Luca > > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help From MAILER-DAEMON Fri Oct 14 02:59:19 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1buwSd-0001ZA-RD for mharc-igraph-help@gnu.org; Fri, 14 Oct 2016 02:59:19 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:42694) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1buwSb-0001Z0-0J for igraph-help@nongnu.org; Fri, 14 Oct 2016 02:59:17 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1buwSX-0003iZ-PI for igraph-help@nongnu.org; Fri, 14 Oct 2016 02:59:16 -0400 Received: from mail-oi0-x229.google.com ([2607:f8b0:4003:c06::229]:34164) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1buwSX-0003iR-Jk for igraph-help@nongnu.org; Fri, 14 Oct 2016 02:59:13 -0400 Received: by mail-oi0-x229.google.com with SMTP id t73so126890619oie.1 for ; Thu, 13 Oct 2016 23:59:13 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=from:content-transfer-encoding:mime-version:subject:message-id:date :to; bh=SfBFlOUP0tpJwoU79ST1keGHOKlFk4PCnCRl/xJn+RE=; b=N/1rL52mvrQQHBouq5rIvcmH7sW6eVjB+egfVTWvlAFDAHUi464CPp1lgP+Drke9bw 0KwNINQWwDiXMGB1eqAkGA/Ie5M3g1g7HALo1AtcGGk3vQRfo1OgWdQMb1XBGOIEUBR3 l2sMrDm/VamCayPt/8xfP7SIf2qEjzOe/Cosum1/MN/Ltn/sUXlu+2PS3ThrzauZG7zg rQOO/DOwLsawFXscuj3ilK8A+jp1C/6Le3qI9m6rt6nv9A7FnXQI5Nbw3tcf1j9qV+FP gnyg/VCq6sK9ddvovDjKEEu/fCeStiYn8WhpNuHmiHlFTCxzFeT4juvxjJ/lCPUgAumm TYtQ== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:from:content-transfer-encoding:mime-version :subject:message-id:date:to; bh=SfBFlOUP0tpJwoU79ST1keGHOKlFk4PCnCRl/xJn+RE=; b=FLCMbDWnn9NYJemANgRow0+2BIcSiCEEw6w8U6jaR+HajqUcnRMRAGnkRjzaCpudhm KgWX4XVc8AwmOThsB8fPO9f9N+G0h9+jZcts5biBSAA/UAI84O4SIdcMVG5Q1amvs+qu KCoI/x4ChL4Iew7io3ZwCmomrsAudkKFPQz0D68+rrX7qryT5mBQnKgsJ1Jay3AVexqr OZsRx0Y+KbKwOPcrHmabNNtepki+R7P6NXRd1d79aHm/oiP7HPT84h/q3sS+YaoIYxdR tO/nibRvVuykKO62fy1pHANhqefr7KoazmX9zHv8oGPjFcbjtWOoTEwKjYU3EUk4RYZE 3djg== X-Gm-Message-State: AA6/9RmxyQq9xuASuyBD5hQoF+AagDY6iuuXaMC/2hEWjMFwG32zc+vTfySKShmK7WuTVA== X-Received: by 10.202.56.132 with SMTP id f126mr7247276oia.73.1476428352510; Thu, 13 Oct 2016 23:59:12 -0700 (PDT) Received: from [192.168.1.75] ([189.171.90.127]) by smtp.gmail.com with ESMTPSA id v79sm5893470oif.20.2016.10.13.23.59.11 for (version=TLS1_2 cipher=ECDHE-RSA-AES128-GCM-SHA256 bits=128/128); Thu, 13 Oct 2016 23:59:11 -0700 (PDT) From: Manuel Zetina-Rejon Content-Type: text/plain; charset=utf-8 Content-Transfer-Encoding: quoted-printable Mime-Version: 1.0 (Mac OS X Mail 10.0 \(3226\)) Message-Id: Date: Fri, 14 Oct 2016 00:59:10 -0600 To: Help for igraph users X-Mailer: Apple Mail (2.3226) X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4003:c06::229 Subject: [igraph] motifs X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 14 Oct 2016 06:59:18 -0000 Hi Guys! This is probably a basic question, but I don=E2=80=99t find the clear = criteria or reference, why in igraph help, you mention that unconnected = subgraphs (of x isomorphic class) are not considered motifs? For that = reason, motifs() is NA for unconnected subgraphs. It is also not clear = if you mean strongly or weakly connected subgraphs According to Milo et al. (2002) and Shen-Orr et al. (2002) motifs are = not necessarily connected, even in directed graphs.=20 Thank you for your opinions Manuel= From MAILER-DAEMON Fri Oct 14 04:31:56 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1buxuF-0008H7-Pz for mharc-igraph-help@gnu.org; Fri, 14 Oct 2016 04:31:55 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:44407) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1buxuD-0008FD-AX for igraph-help@nongnu.org; Fri, 14 Oct 2016 04:31:54 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1buxuA-0004eN-Vo for igraph-help@nongnu.org; Fri, 14 Oct 2016 04:31:52 -0400 Received: from mail-io0-x233.google.com ([2607:f8b0:4001:c06::233]:33788) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1buxuA-0004e5-Qr for igraph-help@nongnu.org; Fri, 14 Oct 2016 04:31:50 -0400 Received: by mail-io0-x233.google.com with SMTP id q192so114057534iod.0 for ; Fri, 14 Oct 2016 01:31:50 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:sender:in-reply-to:references:from:date:message-id :subject:to:content-transfer-encoding; bh=qHAhSvracGiJPBg0KJxn3G99gYdEFC9mV0qd94lKc6w=; b=ZZFaICDHVwY+ckrXm4uOibwVupaZ3Vbun2gJnUfSb9YFWBjf1XbVFoCsq29soUtZdo 0N12gUMJSpeP6ABbteyRsSqR85KiO3mH8iTeeowEdpFeeoSUE0QggU8XavMdbv2SJzb0 PX0GYmjc6etk3xkjsNNbf0ceuLtCz9CCm5O5vmLbR3meh1erVGIrWfvMoqZMPj+P+z+9 SxaWHMRjMcRj5HCfVkEd9lxz1bDzuxoL+IUTg0NqQGpOwEsgWkIg8xYK4zAJ119kT1+y PwIuX3jknkIm1vEk+Od5KIq8UpwUVOc9+tgf6NBPP5g426Ozc6x/Ra4OCoEwqyHOUlsQ rEpw== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:sender:in-reply-to:references:from :date:message-id:subject:to:content-transfer-encoding; bh=qHAhSvracGiJPBg0KJxn3G99gYdEFC9mV0qd94lKc6w=; b=gyx5gUhqOg1x3ifSb4lUBpPsqD1SDse2g2s5TEr0Nex0BXqO+WXq6DoVYJWTP4mF94 qt/uecwG6ebzvlzeq738LzxFc0ThRuN/foQ6sNb4gOUOiV33KWWT6KbruZ0Z+2kb77by MTDaYqzvduujn8QgK2+7VomcX3nQc1meoBpQKXbBqfSqgSpVgVxFJoUnLzwRowmCqaLD 3GWs1Lga9VKGBicoUkAAOKsIVGM2UkLqD18wsuBQGpQgrbWIvWZecU7fAhYoPi5jg9SH 6HAUQ9UslnXPRcNnlWouwmw7AvXhR5PYwqcNl+mYNCkdH7KO9xMlw4VlKO5U+16Rw2pI 0waQ== X-Gm-Message-State: AA6/9RmePWPM5RlQe+3j/aME2sHqI4lqdqvhvmWdek0wWMavxP35aloPx/TJIw5IKohLrmfWe8WIGrvaCs/XYA== X-Received: by 10.107.181.88 with SMTP id e85mr10756410iof.112.1476433909843; Fri, 14 Oct 2016 01:31:49 -0700 (PDT) MIME-Version: 1.0 Sender: ntamas@gmail.com Received: by 10.107.46.32 with HTTP; Fri, 14 Oct 2016 01:31:49 -0700 (PDT) In-Reply-To: References: From: Tamas Nepusz Date: Fri, 14 Oct 2016 10:31:49 +0200 X-Google-Sender-Auth: lRshMIvBqV2cGv4tFeQjmxFDJDA Message-ID: To: Help for igraph users Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4001:c06::233 Subject: Re: [igraph] motifs X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 14 Oct 2016 08:31:54 -0000 Hi! I haven't read the papers once again, but in my opinion a disconnected motif doesn't really make sense. Consider a disconnected motif that consists of a fully connected triangle and an additional isolated vertex, and then take a graph that contains one triangle and one million isolated vertices. Does that really mean that this "motif" appears one million times in the graph? Is that a significant finding? If I added an additional one million totally unrelated vertices to the graph, does that make the motif appear twice as frequently? Anyway, if you want to search for disconnected patterns in a graph, you can still use count_subgaph_isomorphisms() with method=3D"lad" and induced=3DTRUE; see: http://igraph.org/r/doc/count_subgraph_isomorphisms.html It will be much slower, though -- searching for connected motifs is much easier if the average degree of a vertex is low. T. On Fri, Oct 14, 2016 at 8:59 AM, Manuel Zetina-Rejon w= rote: > Hi Guys! > > This is probably a basic question, but I don=E2=80=99t find the clear cri= teria or reference, why in igraph help, you mention that unconnected subgra= phs (of x isomorphic class) are not considered motifs? For that reason, mot= ifs() is NA for unconnected subgraphs. It is also not clear if you mean str= ongly or weakly connected subgraphs > > According to Milo et al. (2002) and Shen-Orr et al. (2002) motifs are not= necessarily connected, even in directed graphs. > > Thank you for your opinions > > > Manuel > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help From MAILER-DAEMON Fri Oct 14 04:59:09 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1buyKb-0000Nr-Aq for mharc-igraph-help@gnu.org; Fri, 14 Oct 2016 04:59:09 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:49394) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1buyKX-0000Jd-Ng for igraph-help@nongnu.org; Fri, 14 Oct 2016 04:59:07 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1buyKU-0005YV-Ei for igraph-help@nongnu.org; Fri, 14 Oct 2016 04:59:05 -0400 Received: from mail-oi0-x234.google.com ([2607:f8b0:4003:c06::234]:35154) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1buyKU-0005YK-8W for igraph-help@nongnu.org; Fri, 14 Oct 2016 04:59:02 -0400 Received: by mail-oi0-x234.google.com with SMTP id d132so129457491oib.2 for ; Fri, 14 Oct 2016 01:59:02 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=from:mime-version:subject:date:references:to:in-reply-to:message-id; bh=ZnmOUuNtvrbLMzz0T/AnHaTk0vISyggKgk9XC4e1xwo=; b=QNktidPYPYSNg2SdUqTtb79cd48JhEmcg+fXjTplg6I7WYR9TE5AQmiA8ohbP+2v6l iT7qKm/WsfR9AdNJujZxfYuiPEhkTurdwT+iAJ8aArFJ4QUk5I6vdSdbjhkCDYyyyFjR +uhdYmFf9ZCIQtmhIiAWmZs30HMCW9RsjTN2o1x0iGpyVQB2pNq0DYOz+Az57+UY6gfY v66IpvBxdvZr+6Ol4WT4zEjDQ1OzlcxB4+GI+FfTMk4cHa4HG8N7AoX9ip0pGeWHYtVS QDBUqhZe9D3sE7iPdCZaV/XdLStfSCUWzxDgR6NGGN3oRSgvZF7B2i7jD0cRMXf10bl4 RFvw== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:from:mime-version:subject:date:references:to :in-reply-to:message-id; bh=ZnmOUuNtvrbLMzz0T/AnHaTk0vISyggKgk9XC4e1xwo=; b=X2xadHhBEugElCi922wxnQRjLcRCuXGxiIZSTUi8XKhqEr7IcJnCPdKs1PfM9VbmFZ mCkdofiZ3Z0Ba4EBP1Xo4zeZmHq6oOlnr7FT8jsc2brZq0iw95qV4SltuMjjozbtE0/0 FbdShlvC0S7F1QWVXl7HkI9A9CTVwadJNdgqLXKcgLLqHMgt97Jhw86/y3++LlNAPnL2 l7jST8Lj4eFnVsOIf5ceRlC3pS8WYEfOlIv3vfLSvlfMOmxQVwSWo2T8VNeMuIXn654M tFREcepVZTtuyHGIc3NQXwOGj0dq5FTWGcunPy/kagE2Z09+KRGuMBgCjpwsMnUcb1xH nSmg== X-Gm-Message-State: AA6/9RnRi/GBFYGx0Nh18d4eKnt2ehz9odMI2wcgytcwqy4h60cCfckxi8sctsPNTGrBHA== X-Received: by 10.202.80.8 with SMTP id e8mr7483527oib.20.1476435541448; Fri, 14 Oct 2016 01:59:01 -0700 (PDT) Received: from [192.168.1.75] ([189.171.90.127]) by smtp.gmail.com with ESMTPSA id q4sm6000650oic.0.2016.10.14.01.59.00 for (version=TLS1_2 cipher=ECDHE-RSA-AES128-GCM-SHA256 bits=128/128); Fri, 14 Oct 2016 01:59:00 -0700 (PDT) From: Manuel Zetina-Rejon Content-Type: multipart/alternative; boundary="Apple-Mail=_8885AAFE-789F-493B-8F94-30778D28B378" Mime-Version: 1.0 (Mac OS X Mail 10.0 \(3226\)) Date: Fri, 14 Oct 2016 02:58:58 -0600 References: To: Help for igraph users In-Reply-To: Message-Id: <3F50792A-48C9-4D22-8FC9-5DC3B5FC0B78@gmail.com> X-Mailer: Apple Mail (2.3226) X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4003:c06::234 Subject: Re: [igraph] motifs X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 14 Oct 2016 08:59:07 -0000 --Apple-Mail=_8885AAFE-789F-493B-8F94-30778D28B378 Content-Transfer-Encoding: quoted-printable Content-Type: text/plain; charset=utf-8 Hi Tamas! Thank you very much for your reply. Actually, it makes sense to me on = the use of connected subgraphs as motifs, in the sense that an isolated = vertex doesn=E2=80=99t play a important role in the subgraph structure. On the other hand, motifs() returns a vector with the number of = occurences of each motif in the graph ordered by their isomorphism = class. How do I know which isomorphism class are present in my graph. I = mean, a possible result of motifs(graph, size =3D3) could be something = like this: > NA NA 32 18 For me, this means that there are 32 motifs of x-isomorphic class and = other 18 motifs of y-isomorphic class. But, which classes? I=E2=80=99ve = playing with something like this to explore how all possible isomorphic = classes (n =3D 3) look like: iso <- vector(mode =3D "list", length =3D 3) iso.class <- 1:length(iso) for(i in 1:length(iso)){ iso[[i]] <- graph_from_isomorphism_class(3, i, directed =3D FALSE) iso[[i]]$name <- paste("Class", iso.class[i]) } par(mfrow =3D c(1,3)) for(i in 1:length(iso)){ plot(iso[[i]], layout =3D layout_in_circle(iso[[i]]), main =3D = iso[[i]]$name) } But How do I know which of them are present in the original graph? Thank you very much! Manuel > El 14/10/2016, a las 02:31, Tamas Nepusz = escribi=C3=B3: >=20 > Hi! >=20 > I haven't read the papers once again, but in my opinion a disconnected > motif doesn't really make sense. Consider a disconnected motif that > consists of a fully connected triangle and an additional isolated > vertex, and then take a graph that contains one triangle and one > million isolated vertices. Does that really mean that this "motif" > appears one million times in the graph? Is that a significant finding? > If I added an additional one million totally unrelated vertices to the > graph, does that make the motif appear twice as frequently? >=20 > Anyway, if you want to search for disconnected patterns in a graph, > you can still use count_subgaph_isomorphisms() with method=3D"lad" and > induced=3DTRUE; see: >=20 > http://igraph.org/r/doc/count_subgraph_isomorphisms.html >=20 > It will be much slower, though -- searching for connected motifs is > much easier if the average degree of a vertex is low. >=20 > T. >=20 >=20 > On Fri, Oct 14, 2016 at 8:59 AM, Manuel Zetina-Rejon = wrote: >> Hi Guys! >>=20 >> This is probably a basic question, but I don=E2=80=99t find the clear = criteria or reference, why in igraph help, you mention that unconnected = subgraphs (of x isomorphic class) are not considered motifs? For that = reason, motifs() is NA for unconnected subgraphs. It is also not clear = if you mean strongly or weakly connected subgraphs >>=20 >> According to Milo et al. (2002) and Shen-Orr et al. (2002) motifs are = not necessarily connected, even in directed graphs. >>=20 >> Thank you for your opinions >>=20 >>=20 >> Manuel >> _______________________________________________ >> igraph-help mailing list >> igraph-help@nongnu.org >> https://lists.nongnu.org/mailman/listinfo/igraph-help >=20 > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help --Apple-Mail=_8885AAFE-789F-493B-8F94-30778D28B378 Content-Transfer-Encoding: quoted-printable Content-Type: text/html; charset=utf-8
Hi Tamas!

Thank you very much for your reply. Actually, it makes = sense to me on the use of connected subgraphs as motifs, in the sense = that an isolated vertex doesn=E2=80=99t play a important role in the = subgraph structure.

On= the other hand, motifs() returns a vector with the number of occurences of = each motif in the graph ordered by their isomorphism class. How do I = know which isomorphism class are present in my graph. I mean, a = possible result of motifs(graph, size =3D3) could be something like = this:
> NA NA 32 18

For me, this = means that there are 32 motifs of x-isomorphic class and other 18 motifs = of y-isomorphic class. But, which classes? I=E2=80=99ve playing with = something like this to explore how all possible isomorphic classes (n =3D = 3) look like:

iso <- vector(mode =3D "list", length =3D = 3)
iso.class <- 1:length(iso)

for(i in = 1:length(iso)){
  iso[[i]] <- = graph_from_isomorphism_class(3, i, directed =3D FALSE)
iso[[i]]$name <- paste("Class", iso.class[i])
}

par(mfrow =3D c(1,3))
for(i in = 1:length(iso)){
plot(iso[[i]], layout =3D = layout_in_circle(iso[[i]]),  main =3D iso[[i]]$name)
}

But How do I know which of them are present in the original = graph?

Thank = you very much!

Manuel

El = 14/10/2016, a las 02:31, Tamas Nepusz <ntamas@rmki.kfki.hu>= escribi=C3=B3:

Hi!

I haven't = read the papers once again, but in my opinion a disconnected
motif doesn't really make sense. Consider a disconnected = motif that
consists of a fully connected triangle and an = additional isolated
vertex, and then take a graph that = contains one triangle and one
million isolated vertices. = Does that really mean that this "motif"
appears one = million times in the graph? Is that a significant finding?
If I added an additional one million totally unrelated = vertices to the
graph, does that make the motif appear = twice as frequently?

Anyway, if you want to = search for disconnected patterns in a graph,
you can still = use count_subgaph_isomorphisms() with method=3D"lad" and
induced=3DTRUE; see:

http://igraph.org/r/doc/count_subgraph_isomorphisms.html
It will be much slower, though -- searching = for connected motifs is
much easier if the average degree = of a vertex is low.

T.


On Fri, Oct 14, 2016 at 8:59 AM, Manuel = Zetina-Rejon <mjzetina@gmail.com> wrote:
Hi Guys!

This is = probably a basic question, but I don=E2=80=99t find the clear criteria = or reference, why in igraph help, you mention that unconnected subgraphs = (of x isomorphic class) are not considered motifs? For that reason, = motifs() is NA for unconnected subgraphs. It is also not clear if you = mean strongly or weakly connected subgraphs

According to Milo et al. (2002) and Shen-Orr et al. (2002) = motifs are not necessarily connected, even in directed graphs.

Thank you for your opinions


Manuel
_______________________________________________
igraph-help mailing list
igraph-help@nongnu.org
https://lists.nongnu.org/mailman/listinfo/igraph-help

_______________________________________________
igraph-help mailing list
igraph-help@nongnu.org
https://lists.nongnu.org/mailman/listinfo/igraph-help

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FPR:; SPF:None; PTR:InfoNoRecords; MX:1; A:1; LANG:en; received-spf: None (protection.outlook.com: itu.dk does not designate permitted sender hosts) spamdiagnosticoutput: 1:99 spamdiagnosticmetadata: NSPM Content-Type: text/plain; charset="Windows-1252" Content-Transfer-Encoding: quoted-printable MIME-Version: 1.0 X-OriginatorOrg: itu.dk X-MS-Exchange-CrossTenant-originalarrivaltime: 14 Oct 2016 21:37:37.7515 (UTC) X-MS-Exchange-CrossTenant-fromentityheader: Hosted X-MS-Exchange-CrossTenant-id: bea229b6-7a08-4086-b44c-71f57f716bdb X-MS-Exchange-Transport-CrossTenantHeadersStamped: HE1PR0201MB2379 X-detected-operating-system: by eggs.gnu.org: Windows 7 or 8 [fuzzy] X-Received-From: 104.47.2.139 Subject: Re: [igraph] listing edges connecting nodes with same attributes X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 14 Oct 2016 21:53:10 -0000 Thank you Tamas! I've tried what you suggested (it looks exactly what I was looking for) but= for some reason it gives me an error:=20 Error: unexpected '=3D=3D' in "E(g)[V(g)$color =3D=3D "red" %--% V(g)$color= =3D=3D" I really don't understand what's wrong... l. ________________________________________ From: igraph-help on behalf = of Tamas Nepusz Sent: 11 October 2016 17:09 To: Help for igraph users Subject: Re: [igraph] listing edges connecting nodes with same attributes Hello, Use the "%--%" operator when indexing the edge sequence; see this page for more details (under the heading "Special functions"): http://igraph.org/r/doc/igraph-es-indexing.html Example: g <- grg.game(100, 0.2) V(g)$color <- c("red", "green") E(g)[V(g)$color =3D=3D "red" %--% V(g)$color =3D=3D "red"] This will give you all the edges between red nodes; you can then use length() to figure out how many such edges there are. T. On Tue, Oct 11, 2016 at 11:52 AM, Luca Rossi wrote: > Hello, > > I=92m sure this is a very simple question but for some reason I can=92t f= igure out how to do it. > I need to list all the edges connecting nodes with a specific attribute. = (e.g. nodes can be =93red=94 or =93green=94). So i want to now how many dya= ds red-red, red-green, green-green. > I=92ve tried with edge_connectivity but it doesn=92t work when source and= target are the same node (as it happens in this case: > > edge_connectivity(g,source =3D V(g)[V(g)$color =3D=3D "green"],target = =3D V(g)[V(g)$color=3D=3D"green=94]) > > > is there any way to do this? > > Thank you ! > > Luca > > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help _______________________________________________ igraph-help mailing list igraph-help@nongnu.org https://lists.nongnu.org/mailman/listinfo/igraph-help= From MAILER-DAEMON Sat Oct 15 16:02:14 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bvV9q-00007e-3a for mharc-igraph-help@gnu.org; Sat, 15 Oct 2016 16:02:14 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:40753) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bvV9m-00007A-W8 for igraph-help@nongnu.org; Sat, 15 Oct 2016 16:02:12 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bvV9l-0006oL-A2 for igraph-help@nongnu.org; Sat, 15 Oct 2016 16:02:11 -0400 Received: from mail-it0-x236.google.com ([2607:f8b0:4001:c0b::236]:36850) by eggs.gnu.org with esmtps (TLS1.0:RSA_AES_128_CBC_SHA1:16) (Exim 4.71) (envelope-from ) id 1bvV9l-0006o5-4g for igraph-help@nongnu.org; Sat, 15 Oct 2016 16:02:09 -0400 Received: by mail-it0-x236.google.com with SMTP id 139so11816504itm.1 for ; Sat, 15 Oct 2016 13:02:08 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:sender:in-reply-to:references:from:date:message-id :subject:to:content-transfer-encoding; bh=2AAN7g6gVeKFE0UyRY9ohwpV7OrUJfR25vUNU/ZGGSo=; b=e1ba7cC0Bxh+qTNdUmUPc/noUkrRAJKoyZfWnXP5C15mA62qNmnjIFgFhlB/Y6v4A7 cFYULFHJ9/oSkSNdO8loPj1Tuapin294DDViWM9pwaJ16tmOKz7/xmq7DgDHMsi7xc03 q5id+ijWhRVjwlQzD46KdmTP5XKdnlz18sYxiX1yjxtb8lDGW0Fp1HuimBR4mLvjF4Ga D4avhLxrrD3KcrfyU4Vx+ebSmqUGUNoRNwr1Uh85NEy470lvE2y9WkTelzhuSd1EwbHt bQ926pkyBJfH46sCvsdSKCwortVgC696B20HlEN0u4/Ym5qj9Ad+RRpepjNAM3bj0luF NFng== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:sender:in-reply-to:references:from :date:message-id:subject:to:content-transfer-encoding; bh=2AAN7g6gVeKFE0UyRY9ohwpV7OrUJfR25vUNU/ZGGSo=; b=NUKj+23c4PFNskel5pTjlclz+lvV9ezxbuc+Af/e/MefX12cIWtPfMnPXgGRtDvfE7 5OEbfUsXCWuoAifhjNJOc2Xpe+TZuU/W+gkvlIkDLycG1LDcAyNTB43Mb1sh+VfRUbdr /OF95NTsznTftGL+1biWOpZias06GuhDoXOW51zFHAZiHu3jFl7mC5lOCIZmySBtb3Pz 7gAmM0XVJk5af32HXxi6IYo/4C5hVYyJZtcbydUYpL3mgqabbVWKBWnAFqocO0A4Ohw4 zxZJWo/+Tu94vZSEIFDRecvcwjZVSdRpuRzgLgkVVava2pE9WikcEXn8lQhRjhI60MV0 q1tQ== X-Gm-Message-State: AA6/9Rk0iPGa6pt6U39kKbGkG4mu8I9Wj3r7nQPcNyR182bn0nzUHvtCzZ+yIhEz+uKMOv3Vz6sciS4sOQthWQ== X-Received: by 10.36.178.27 with SMTP id u27mr3080243ite.113.1476561727821; Sat, 15 Oct 2016 13:02:07 -0700 (PDT) MIME-Version: 1.0 Sender: ntamas@gmail.com Received: by 10.107.9.221 with HTTP; Sat, 15 Oct 2016 13:02:07 -0700 (PDT) In-Reply-To: References: <94F15F27-9ABE-4C01-BA59-5219529BF441@itu.dk> From: Tamas Nepusz Date: Sat, 15 Oct 2016 22:02:07 +0200 X-Google-Sender-Auth: 6KDNhSjm_t3qAX9TR8wjEjA-tOQ Message-ID: To: Help for igraph users Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4001:c0b::236 Subject: Re: [igraph] listing edges connecting nodes with same attributes X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Sat, 15 Oct 2016 20:02:12 -0000 Try this: E(g)[which(V(g)$color =3D=3D "red") %--% which(V(g)$color =3D=3D "red")] This seems to work for me - just tried it in R. T. On Fri, Oct 14, 2016 at 11:37 PM, Luca Rossi wrote: > Thank you Tamas! > > I've tried what you suggested (it looks exactly what I was looking for) b= ut for some reason it gives me an error: > Error: unexpected '=3D=3D' in "E(g)[V(g)$color =3D=3D "red" %--% V(g)$col= or =3D=3D" > > I really don't understand what's wrong... > > l. > > > ________________________________________ > From: igraph-help on behal= f of Tamas Nepusz > Sent: 11 October 2016 17:09 > To: Help for igraph users > Subject: Re: [igraph] listing edges connecting nodes with same attributes > > Hello, > > Use the "%--%" operator when indexing the edge sequence; see this page > for more details (under the heading "Special functions"): > > http://igraph.org/r/doc/igraph-es-indexing.html > > Example: > > g <- grg.game(100, 0.2) > V(g)$color <- c("red", "green") > E(g)[V(g)$color =3D=3D "red" %--% V(g)$color =3D=3D "red"] > > This will give you all the edges between red nodes; you can then use > length() to figure out how many such edges there are. > > T. > > > On Tue, Oct 11, 2016 at 11:52 AM, Luca Rossi wrote: >> Hello, >> >> I=E2=80=99m sure this is a very simple question but for some reason I ca= n=E2=80=99t figure out how to do it. >> I need to list all the edges connecting nodes with a specific attribute.= (e.g. nodes can be =E2=80=9Cred=E2=80=9D or =E2=80=9Cgreen=E2=80=9D). So i= want to now how many dyads red-red, red-green, green-green. >> I=E2=80=99ve tried with edge_connectivity but it doesn=E2=80=99t work wh= en source and target are the same node (as it happens in this case: >> >> edge_connectivity(g,source =3D V(g)[V(g)$color =3D=3D "green"],target = =3D V(g)[V(g)$color=3D=3D"green=E2=80=9D]) >> >> >> is there any way to do this? >> >> Thank you ! >> >> Luca >> >> >> _______________________________________________ >> igraph-help mailing list >> igraph-help@nongnu.org >> https://lists.nongnu.org/mailman/listinfo/igraph-help > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help From MAILER-DAEMON Wed Oct 26 04:23:40 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bzJUn-0004w2-E9 for mharc-igraph-help@gnu.org; Wed, 26 Oct 2016 04:23:40 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:44991) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bzITR-0007tB-9r for igraph-help@nongnu.org; Wed, 26 Oct 2016 03:18:10 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bzITM-0002IX-V4 for igraph-help@nongnu.org; Wed, 26 Oct 2016 03:18:08 -0400 Received: from mailhost.u-strasbg.fr ([130.79.222.215]:53127) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bzITM-0002IK-OO for igraph-help@nongnu.org; Wed, 26 Oct 2016 03:18:04 -0400 Received: from mailhost.u-strasbg.fr (localhost [127.0.0.1]) by antispam (Postfix) with ESMTP id 0DFE7A492D for ; Wed, 26 Oct 2016 09:17:59 +0200 (CEST) Received: from mailhost.u-strasbg.fr (localhost [127.0.0.1]) by antivirus (Postfix) with ESMTP id F2110A4A24 for ; Wed, 26 Oct 2016 09:17:58 +0200 (CEST) Received: from local-mr.u-strasbg.fr (lmr4.u-strasbg.fr [172.30.21.4]) by mr5.u-strasbg.fr (Postfix) with ESMTP id CBCD0A492D for ; Wed, 26 Oct 2016 09:17:57 +0200 (CEST) Received: from local-mr.u-strasbg.fr (localhost [127.0.0.1]) by antivirus (Postfix) with ESMTP id A9BF192 for ; Wed, 26 Oct 2016 09:17:57 +0200 (CEST) Received: from [192.168.1.7] (ip160-152-209-87.adsl2.static.versatel.nl [87.209.152.160]) (Authenticated sender: cowan) by lmr4.u-strasbg.fr (Postfix) with ESMTPSA id 61C31A0 for ; Wed, 26 Oct 2016 09:17:56 +0200 (CEST) Content-Type: text/plain; charset=us-ascii Mime-Version: 1.0 (Mac OS X Mail 7.3 \(1878.6\)) From: cowan robin In-Reply-To: <5063930D.3070208@mpi-marburg.mpg.de> Date: Wed, 26 Oct 2016 09:17:57 +0200 Content-Transfer-Encoding: quoted-printable Message-Id: References: <5062D729.7090305@mpi-marburg.mpg.de> <5062F6A6.5020409@gmail.com> <5063930D.3070208@mpi-marburg.mpg.de> To: Help for igraph users X-Mailer: Apple Mail (2.1878.6) X-Virus-Scanned: ClamAV using ClamSMTP X-Virus-Scanned: ClamAV using ClamSMTP X-detected-operating-system: by eggs.gnu.org: GNU/Linux 3.x X-Received-From: 130.79.222.215 X-Mailman-Approved-At: Wed, 26 Oct 2016 04:23:36 -0400 Subject: [igraph] plotting networks X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Wed, 26 Oct 2016 07:18:10 -0000 I have a simulation of a dynamic network of about 50 nodes. I want to = watch it evolve by plotting it every time step of the evolution. When I did this using R 3.1.1 and the legacy igraph0 library, it worked = perfectly. I recently upgraded R to 3.3 and have installed the igraph 0.7. Plotting = now is desperately slow, to the extent that I cannot use it. (Yes, I did = change the vertex indexing from 0 to 1.) Is the problem in the R upgrade, or in the igraph change? igraph0 is not recognized by R 3.3 unfortunately. Any suggestions? (I am willing to downgrade to R 3.3.1, though R does not make this a = simple operation it seems) Thanks for your help, Robin Cowan From MAILER-DAEMON Wed Oct 26 06:41:36 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bzLeK-0004Km-EF for mharc-igraph-help@gnu.org; Wed, 26 Oct 2016 06:41:36 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:50806) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bzLeH-0004IX-W8 for igraph-help@nongnu.org; Wed, 26 Oct 2016 06:41:35 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bzLeH-0008D4-3B for igraph-help@nongnu.org; Wed, 26 Oct 2016 06:41:34 -0400 Received: from mail-it0-x22c.google.com ([2607:f8b0:4001:c0b::22c]:37291) by eggs.gnu.org with esmtps (TLS1.0:RSA_AES_128_CBC_SHA1:16) (Exim 4.71) (envelope-from ) id 1bzLeG-0008CN-Uh for igraph-help@nongnu.org; Wed, 26 Oct 2016 06:41:33 -0400 Received: by mail-it0-x22c.google.com with SMTP id u205so23538722itc.0 for ; Wed, 26 Oct 2016 03:41:32 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:sender:in-reply-to:references:from:date:message-id :subject:to; bh=++LlBkf7BiofozTVwrZ8Px4xekiWf6++lR3YQjWhVfQ=; b=Q4R9cE3IeT/WUQw2A5BWVt93bI3jY42Rtnj2lo/kuSNKqrRxp/3byc17ESB6bEI0dT e75fDirB+QSC1GGLZR51bb7Ay3kXAS3QUlk0kr5H1BJsfLjuiE1+y9HyrMbB4shmO/QO /GT+NpzVzLw1HfPxeuDfZ80U7wKqXOHIQYFsRhkP+WpZiRvpIfaSIUKI3EBg0iaIrfMc URaGL9ITUCb7cJNhe+Badeo2vIw5cNgRAinbFQU6+6k26lkWPBxZNJg9VmzLkk7zxjmV JqFpUf8DmZ4NLUeUJ7YkB2HOUuaVYVqftlzDcwdmk6kMsS0Xs7VTum3PfEO+khQ2KGe/ ynLA== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:sender:in-reply-to:references:from :date:message-id:subject:to; bh=++LlBkf7BiofozTVwrZ8Px4xekiWf6++lR3YQjWhVfQ=; b=YkRVjiaVlCaW9QGGVIbrXqJGTFgPAe8V7MeCHFYuPXhx0vwmFArmQsrIWlmgJ9jayJ a4XrzjmPzjE9HadcpFgLyX6cdmr6+O9RK42tSMQ66KbKLLp6/LRvZ1wElPtB1X7WzWtc pTsxesKPEN77z0AJcTxt19svTtpu6/mJ2m/uwuAbCVe/5WGDXVszBCVnto4sKTpx01uT 0jRmDlzYrbGSVyOmadmS8EqSeNdWrNM3Kettfd2DOcWo7IAEJHtRv6G/W47fJSC0JMNj odHrpQKC0Ruzfj6IK1zkVTZFXFX6JB82QugOFZNp1+gyrZq2tufGd87Kww3dymiSoKUN GYHA== X-Gm-Message-State: ABUngvdpW/J9d9OxAOfWhsdY7+MoIgrhqLlpb6Lzq9z+h3P8DZGj5zeAp2eH4vZ6Us1pswb3PApKOmlZExq2HA== X-Received: by 10.107.160.20 with SMTP id j20mr1489436ioe.27.1477478491637; Wed, 26 Oct 2016 03:41:31 -0700 (PDT) MIME-Version: 1.0 Sender: ntamas@gmail.com Received: by 10.107.9.221 with HTTP; Wed, 26 Oct 2016 03:41:31 -0700 (PDT) In-Reply-To: References: <5062D729.7090305@mpi-marburg.mpg.de> <5062F6A6.5020409@gmail.com> <5063930D.3070208@mpi-marburg.mpg.de> From: Tamas Nepusz Date: Wed, 26 Oct 2016 18:41:31 +0800 X-Google-Sender-Auth: -ssZp7XaUgeZExv1eoxemYg3hMY Message-ID: To: Help for igraph users Content-Type: text/plain; charset=UTF-8 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4001:c0b::22c Subject: Re: [igraph] plotting networks X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Wed, 26 Oct 2016 10:41:35 -0000 Hi, Which plotting device are you using from R? I vaguely remember that the built-in Quartz plotting device in R is somewhat slow (although it's not a new thing), and switching to the x11() device made the plotting faster. T. On Wed, Oct 26, 2016 at 3:17 PM, cowan robin wrote: > I have a simulation of a dynamic network of about 50 nodes. I want to watch it evolve by plotting it every time step of the evolution. > When I did this using R 3.1.1 and the legacy igraph0 library, it worked perfectly. > > I recently upgraded R to 3.3 and have installed the igraph 0.7. Plotting now is desperately slow, to the extent that I cannot use it. (Yes, I did change the vertex indexing from 0 to 1.) > > Is the problem in the R upgrade, or in the igraph change? > > igraph0 is not recognized by R 3.3 unfortunately. > > Any suggestions? > (I am willing to downgrade to R 3.3.1, though R does not make this a simple operation it seems) > > Thanks for your help, > Robin Cowan > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help From MAILER-DAEMON Wed Oct 26 12:10:47 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bzQmt-0006Jj-EW for mharc-igraph-help@gnu.org; Wed, 26 Oct 2016 12:10:47 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:33529) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bzOmf-0008AJ-1k for igraph-help@nongnu.org; Wed, 26 Oct 2016 10:02:29 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bzOma-0000jq-2z for igraph-help@nongnu.org; Wed, 26 Oct 2016 10:02:25 -0400 Received: from mailhost.u-strasbg.fr ([130.79.222.216]:44549) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bzOmZ-0000iw-Od for igraph-help@nongnu.org; Wed, 26 Oct 2016 10:02:20 -0400 Received: from mailhost.u-strasbg.fr (localhost [127.0.0.1]) by antispam (Postfix) with ESMTP id 6ADF01447FB for ; Wed, 26 Oct 2016 16:02:00 +0200 (CEST) Received: from mailhost.u-strasbg.fr (localhost [127.0.0.1]) by antivirus (Postfix) with ESMTP id 5B2EA14527C for ; Wed, 26 Oct 2016 16:02:00 +0200 (CEST) Received: from local-mr.u-strasbg.fr (lmr1.u-strasbg.fr [172.30.21.1]) by mr6.u-strasbg.fr (Postfix) with ESMTP id 4B00E1447FB for ; Wed, 26 Oct 2016 16:01:59 +0200 (CEST) Received: from local-mr.u-strasbg.fr (localhost [127.0.0.1]) by antivirus (Postfix) with ESMTP id 25D3093 for ; Wed, 26 Oct 2016 16:01:59 +0200 (CEST) Received: from [10.19.227.158] (pf.merit.unu.edu [192.87.143.23]) (Authenticated sender: cowan) by lmr1.u-strasbg.fr (Postfix) with ESMTPSA id E4935D4 for ; Wed, 26 Oct 2016 16:01:57 +0200 (CEST) Content-Type: text/plain; charset=us-ascii Mime-Version: 1.0 (Mac OS X Mail 7.3 \(1878.6\)) From: cowan robin In-Reply-To: Date: Wed, 26 Oct 2016 16:01:58 +0200 Content-Transfer-Encoding: quoted-printable Message-Id: References: <5062D729.7090305@mpi-marburg.mpg.de> <5062F6A6.5020409@gmail.com> <5063930D.3070208@mpi-marburg.mpg.de> To: Help for igraph users X-Mailer: Apple Mail (2.1878.6) X-Virus-Scanned: ClamAV using ClamSMTP X-Virus-Scanned: ClamAV using ClamSMTP X-detected-operating-system: by eggs.gnu.org: GNU/Linux 3.x X-Received-From: 130.79.222.216 X-Mailman-Approved-At: Wed, 26 Oct 2016 12:10:46 -0400 Subject: Re: [igraph] plotting networks X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Wed, 26 Oct 2016 14:02:30 -0000 I was using quartz. Doing it in an X11 window does make it draw as fast as it used to so = that is good. Thanks for that. (Any prospect of fixing the quartz() drawing? Or is = that an R issue?) However, in the process of trying to get things to work, I have = inadvertently installed igraph 1.0 on top of 0.7. Is there an easy way = to go back to 0.7? Robin Cowan On 26 Oct 2016, at 12:41 PM, Tamas Nepusz wrote: > Hi, >=20 > Which plotting device are you using from R? I vaguely remember that > the built-in Quartz plotting device in R is somewhat slow (although > it's not a new thing), and switching to the x11() device made the > plotting faster. > T. >=20 >=20 > On Wed, Oct 26, 2016 at 3:17 PM, cowan robin > wrote: >> I have a simulation of a dynamic network of about 50 nodes. I want to = watch it evolve by plotting it every time step of the evolution. >> When I did this using R 3.1.1 and the legacy igraph0 library, it = worked perfectly. >>=20 >> I recently upgraded R to 3.3 and have installed the igraph 0.7. = Plotting now is desperately slow, to the extent that I cannot use it. = (Yes, I did change the vertex indexing from 0 to 1.) >>=20 >> Is the problem in the R upgrade, or in the igraph change? >>=20 >> igraph0 is not recognized by R 3.3 unfortunately. >>=20 >> Any suggestions? >> (I am willing to downgrade to R 3.3.1, though R does not make this a = simple operation it seems) >>=20 >> Thanks for your help, >> Robin Cowan >>=20 >> _______________________________________________ >> igraph-help mailing list >> igraph-help@nongnu.org >> https://lists.nongnu.org/mailman/listinfo/igraph-help >=20 > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help From MAILER-DAEMON Thu Oct 27 16:36:13 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1bzrPJ-0004k7-DP for mharc-igraph-help@gnu.org; Thu, 27 Oct 2016 16:36:13 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:35333) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1bzotq-0005f6-VL for igraph-help@nongnu.org; Thu, 27 Oct 2016 13:55:36 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1bzotn-00056V-Tc for igraph-help@nongnu.org; Thu, 27 Oct 2016 13:55:35 -0400 Received: from smtp6.rz.tu-harburg.de ([134.28.205.36]:46168) by eggs.gnu.org with esmtps (TLS1.0:DHE_RSA_AES_256_CBC_SHA1:32) (Exim 4.71) (envelope-from ) id 1bzotn-00053z-JS for igraph-help@nongnu.org; Thu, 27 Oct 2016 13:55:31 -0400 Received: from mail.tu-harburg.de (mail3.rz.tu-harburg.de [134.28.202.82]) (using TLSv1.2 with cipher ECDHE-RSA-AES256-GCM-SHA384 (256/256 bits)) (Client CN "mail.tu-harburg.de", Issuer "TUHH CA in DFN-PKI Global - G01" (verified OK)) by smtp6.rz.tu-harburg.de (Postfix) with ESMTPS id 3t4ZL75DRtzGmT1 for ; Thu, 27 Oct 2016 19:55:27 +0200 (CEST) Received: from mailspring.rz.tu-harburg.de (mailspring.rz.tu-harburg.de [134.28.202.181]) (using TLSv1 with cipher ECDHE-RSA-AES256-SHA (256/256 bits)) (No client certificate requested) (Authenticated sender: cdm3059@KERBEROS.TU-HARBURG.DE) by mail.tu-harburg.de (Postfix) with ESMTPSA id 3t4ZL74GMSzhXyR for ; Thu, 27 Oct 2016 19:55:27 +0200 (CEST) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=tuhh.de; s=x2016-43; t=1477590927; bh=69T54f/blH/A9CzMO9qdc8zU223GD8ZHU5NGAddS/iI=; h=From:Content-Type:Subject:Message-Id:Date:To:Mime-Version; b=nkQSxFI9QhbjTg0wC3Gou8yFh+YuZ/3M6OiRAGKpwS4KEinqxuyiwkiKYZTH49ufS JpnqcHLbnniSC54BQx7Jm0XXAnZ/+z1F5pQL4ko28WOLd27LZOaO3HmEKCslmOdmci asamdN85h+pzLoNkQeMbzOlTLc2paE+vMCrO2wjw= From: Dimitri Graf Content-Type: multipart/alternative; boundary="Apple-Mail=_402468F2-BBD6-4642-AE70-7CA9C0ACCD7F" Message-Id: <19593D80-C043-428B-9D55-57F954A63C25@tuhh.de> Date: Thu, 27 Oct 2016 19:55:26 +0200 To: igraph-help@nongnu.org Mime-Version: 1.0 (Mac OS X Mail 9.3 \(3124\)) X-Mailer: Apple Mail (2.3124) X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 134.28.205.36 X-Mailman-Approved-At: Thu, 27 Oct 2016 16:36:10 -0400 Subject: Re: [igraph] plotting networks X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Thu, 27 Oct 2016 17:55:36 -0000 --Apple-Mail=_402468F2-BBD6-4642-AE70-7CA9C0ACCD7F Content-Transfer-Encoding: quoted-printable Content-Type: text/plain; charset=utf-8 Hi Robin, to get an older version of igraph installed use: i_graph07 <- = "https://cran.r-project.org/src/contrib/Archive/igraph/igraph_0.7.0.tar.gz= = =E2=80=9D install.packages(i_graph07, repos =3D NULL, type =3D =E2=80=9Csource=E2=80= =9D) Here is also a link to plotting networks in R, with a section on = interactive plotting. Great guide in general: http://kateto.net/network-visualization = Best, Dimitri=20 --Apple-Mail=_402468F2-BBD6-4642-AE70-7CA9C0ACCD7F Content-Transfer-Encoding: quoted-printable Content-Type: text/html; charset=utf-8
Hi Robin,

to get an older version of igraph = installed use:

install.packages(i_graph07, = repos =3D NULL, type =3D =E2=80=9Csource=E2=80=9D)

Here is also a link to = plotting networks in R, with a section on interactive plotting. Great = guide in general:

Best,
Dimitri 


= --Apple-Mail=_402468F2-BBD6-4642-AE70-7CA9C0ACCD7F-- From MAILER-DAEMON Fri Oct 28 03:57:56 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1c0232-0005Cg-4a for mharc-igraph-help@gnu.org; Fri, 28 Oct 2016 03:57:56 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:54520) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1c0230-0005Bb-10 for igraph-help@nongnu.org; Fri, 28 Oct 2016 03:57:54 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1c022w-0007P3-1u for igraph-help@nongnu.org; Fri, 28 Oct 2016 03:57:54 -0400 Received: from mailhost.u-strasbg.fr ([130.79.222.215]:47964) by eggs.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1c022v-0007OH-RO for igraph-help@nongnu.org; Fri, 28 Oct 2016 03:57:49 -0400 Received: from mailhost.u-strasbg.fr (localhost [127.0.0.1]) by antispam (Postfix) with ESMTP id BED7BA3974 for ; Fri, 28 Oct 2016 09:57:43 +0200 (CEST) Received: from mailhost.u-strasbg.fr (localhost [127.0.0.1]) by antivirus (Postfix) with ESMTP id AFB3EA317C for ; Fri, 28 Oct 2016 09:57:43 +0200 (CEST) Received: from local-mr.u-strasbg.fr (lmr1.u-strasbg.fr [172.30.21.1]) by mr5.u-strasbg.fr (Postfix) with ESMTP id A079DA3974 for ; Fri, 28 Oct 2016 09:57:42 +0200 (CEST) Received: from local-mr.u-strasbg.fr (localhost [127.0.0.1]) by antivirus (Postfix) with ESMTP id 7924CA1 for ; Fri, 28 Oct 2016 09:57:42 +0200 (CEST) Received: from [192.168.1.7] (ip160-152-209-87.adsl2.static.versatel.nl [87.209.152.160]) (Authenticated sender: cowan) by lmr1.u-strasbg.fr (Postfix) with ESMTPSA id 196E1CE for ; Fri, 28 Oct 2016 09:57:40 +0200 (CEST) Content-Type: text/plain; charset=windows-1252 Mime-Version: 1.0 (Mac OS X Mail 7.3 \(1878.6\)) From: cowan robin In-Reply-To: <19593D80-C043-428B-9D55-57F954A63C25@tuhh.de> Date: Fri, 28 Oct 2016 09:57:38 +0200 Content-Transfer-Encoding: quoted-printable Message-Id: <9C4487B5-4709-4C55-A15D-9A5D01BAB146@maastrichtuniversity.nl> References: <19593D80-C043-428B-9D55-57F954A63C25@tuhh.de> To: Help for igraph users X-Mailer: Apple Mail (2.1878.6) X-Virus-Scanned: ClamAV using ClamSMTP X-Virus-Scanned: ClamAV using ClamSMTP X-detected-operating-system: by eggs.gnu.org: GNU/Linux 3.x X-Received-From: 130.79.222.215 Subject: Re: [igraph] plotting networks X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 28 Oct 2016 07:57:55 -0000 Thanks a lot. On 27 Oct 2016, at 7:55 PM, Dimitri Graf wrote: > Hi Robin, >=20 > to get an older version of igraph installed use: >=20 > i_graph07 <- = "https://cran.r-project.org/src/contrib/Archive/igraph/igraph_0.7.0.tar.gz= =94 > install.packages(i_graph07, repos =3D NULL, type =3D =93source=94) >=20 > Here is also a link to plotting networks in R, with a section on = interactive plotting. Great guide in general: > http://kateto.net/network-visualization >=20 > Best, > Dimitri=20 >=20 >=20 > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help From MAILER-DAEMON Fri Oct 28 16:45:20 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1c0E1g-0006Nb-59 for mharc-igraph-help@gnu.org; Fri, 28 Oct 2016 16:45:20 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:32941) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1c0E1d-0006Lj-Pu for igraph-help@nongnu.org; Fri, 28 Oct 2016 16:45:18 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1c0E1Z-0005PS-TV for igraph-help@nongnu.org; Fri, 28 Oct 2016 16:45:17 -0400 Received: from piper.jhuapl.edu ([128.244.251.37]:27962) by eggs.gnu.org with esmtps (TLS1.0:DHE_RSA_AES_256_CBC_SHA1:32) (Exim 4.71) (envelope-from ) id 1c0E1Z-0005PJ-P3 for igraph-help@nongnu.org; Fri, 28 Oct 2016 16:45:13 -0400 Received: from APLEX03.dom1.jhuapl.edu (unknown [128.244.198.7]) by piper.jhuapl.edu with smtp (TLS: TLSv1/SSLv3,256bits,ECDHE-RSA-AES256-SHA384) id 3f6e_7b3a_808eaeed_3df3_4fa3_9f95_b4ca3a2ed197; Fri, 28 Oct 2016 16:45:12 -0400 X-CrossPremisesHeadersFilteredBySendConnector: APLEX03.dom1.jhuapl.edu Received: from APLEX06.dom1.jhuapl.edu (128.244.198.140) by APLEX03.dom1.jhuapl.edu (128.244.198.7) with Microsoft SMTP Server (TLS) id 15.0.1178.4; Fri, 28 Oct 2016 16:45:11 -0400 Received: from APLEX06.dom1.jhuapl.edu ([fe80::a914:149c:264c:e062]) by APLEX06.dom1.jhuapl.edu ([fe80::a914:149c:264c:e062%17]) with mapi id 15.00.1178.000; Fri, 28 Oct 2016 16:45:11 -0400 From: "Perrone, Alexander G." To: "igraph-help@nongnu.org" Thread-Topic: Subgraph edges Thread-Index: AQHSMVwt1adGl08ejUqiEa6aeYV7fg== Date: Fri, 28 Oct 2016 20:45:11 +0000 Message-ID: Accept-Language: en-US Content-Language: en-US X-MS-Has-Attach: X-MS-TNEF-Correlator: user-agent: Microsoft-MacOutlook/14.6.9.160926 x-ms-exchange-messagesentrepresentingtype: 1 x-ms-exchange-transport-fromentityheader: Hosted x-originating-ip: [128.244.198.168] Content-Type: text/plain; charset="utf-8" Content-ID: Content-Transfer-Encoding: base64 MIME-Version: 1.0 X-OrganizationHeadersPreserved: APLEX03.dom1.jhuapl.edu X-detected-operating-system: by eggs.gnu.org: Genre and OS details not recognized. X-Received-From: 128.244.251.37 Subject: [igraph] Subgraph edges X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Fri, 28 Oct 2016 20:45:18 -0000 TWF5YmUgc3R1cGlkIHF1ZXN0aW9uLCBidXQgd2hlbiB1c2luZyBzdWJncmFwaC5lZGdlcyB1c2lu ZyBhbiBpbmRleCwgaXQNCnJldHVybnMgdGhlIHdyb25nIGVkZ2UgYW5kL29yIHJlLW5hbWVzIHRo ZSB2ZXJ0aWNlcy4gSG93IGRvIEkgZ2V0IGENCnN1YmdyYXBoIGJhc2VkIG9uIGFuIGluZGV4IG9m IHRoZSBlZGdlcz8NCg0KRm9yIGEgZ3JhcGggZywgc2F5IEkgd2FudCB0byBzdWJncmFwaCB0byB0 aGUgZmlyc3QgZWRnZSwgd2hpY2ggaW4gdGhlIGNhc2UNCmJlbG93IGlzIDHigJMzLiBJIHRyeSBz dWJncmFwaC5lZGdlcyhnLCAxKSBidXQgaXQgcmV0dXJucyB0aGUgd3JvbmcgZWRnZS4gSW4NCmZh Y3QsIGl0IGFsd2F5cyByZXR1cm5zIHRoZSBzYW1lIGVkZ2UgKDHigJMyKSB3aGljaCBtYWtlcyBt ZSB0aGluayBpdCBpcw0KcmUtbmFtaW5nIHRoZSB2ZXJ0aWNlcy4NCg0Kc2V0LnNlZWQoMSkNCmcg PC0gc2FtcGxlX2dubSg1LCA1KQ0KZw0KIyMgSUdSQVBIIFUtLS0gNSA1IC0tIEVyZG9zIHJlbnlp IChnbm0pIGdyYXBoDQojIyArIGF0dHI6IG5hbWUgKGcvYyksIHR5cGUgKGcvYyksIGxvb3BzIChn L2wpLCBtIChnL24pDQojIyArIGVkZ2VzOg0KIyMgICBbMV0gMS0tMyAyLS0zIDEtLTQgMS0tNSA0 LS01DQoNCg0Kc3ViZ3JhcGguZWRnZXMoZywgMSkgICMgV0FOVCB0byByZXR1cm4gMeKAkzMNCiMj IElHUkFQSCBVLS0tIDIgMSAtLSBFcmRvcyByZW55aSAoZ25tKSBncmFwaA0KIyMgKyBhdHRyOiBu YW1lIChnL2MpLCB0eXBlIChnL2MpLCBsb29wcyAoZy9sKSwgbSAoZy9uKQ0KIyMgKyBlZGdlOg0K IyMgICBbMV0gMS0tMg0KDQoNCnNlc3Npb25JbmZvKCkNClIgdmVyc2lvbiAzLjMuMCAoMjAxNi0w NS0wMykNClBsYXRmb3JtOiB4ODZfNjQtYXBwbGUtZGFyd2luMTMuNC4wICg2NC1iaXQpDQpSdW5u aW5nIHVuZGVyOiBPUyBYIDEwLjExLjYgKEVsIENhcGl0YW4pDQoNCmxvY2FsZToNClsxXSBlbl9V Uy5VVEYtOC9lbl9VUy5VVEYtOC9lbl9VUy5VVEYtOC9DL2VuX1VTLlVURi04L2VuX1VTLlVURi04 DQoNCmF0dGFjaGVkIGJhc2UgcGFja2FnZXM6DQpbMV0gc3RhdHMgICAgIGdyYXBoaWNzICBnckRl dmljZXMgdXRpbHMgICAgIGRhdGFzZXRzICBtZXRob2RzICAgYmFzZQ0KDQpvdGhlciBhdHRhY2hl ZCBwYWNrYWdlczoNClsxXSB2aXNOZXR3b3JrXzEuMC4yICAgUkNvbG9yQnJld2VyXzEuMS0yIGRh dGEudGFibGVfMS45LjYgICBpZ3JhcGhfMS4wLjENCiAgICANCg0KbG9hZGVkIHZpYSBhIG5hbWVz cGFjZSAoYW5kIG5vdCBhdHRhY2hlZCk6DQogWzFdIGh0bWx3aWRnZXRzXzAuNiBNYXRyaXhfMS4y LTcuMSAgbWFncml0dHJfMS41ICAgIGh0bWx0b29sc18wLjMuNQ0KdG9vbHNfMy4zLjAgICAgDQog WzZdIFJjcHBfMC4xMi41ICAgICBncmlkXzMuMy4wICAgICAganNvbmxpdGVfMC45LjIwIGRpZ2Vz dF8wLjYuOQ0KY2hyb25fMi4zLTQ3ICAgDQpbMTFdIGxhdHRpY2VfMC4yMC0zMw0KDQoNCg0KDQoN Cg0K From MAILER-DAEMON Sat Oct 29 15:33:46 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1c0ZNy-0006Rs-TW for mharc-igraph-help@gnu.org; Sat, 29 Oct 2016 15:33:46 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:48689) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1c0ZNx-0006Rl-G5 for igraph-help@nongnu.org; Sat, 29 Oct 2016 15:33:46 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1c0ZNw-0008Lw-ME for igraph-help@nongnu.org; Sat, 29 Oct 2016 15:33:45 -0400 Received: from mail-it0-x231.google.com ([2607:f8b0:4001:c0b::231]:35850) by eggs.gnu.org with esmtps (TLS1.0:RSA_AES_128_CBC_SHA1:16) (Exim 4.71) (envelope-from ) id 1c0ZNw-0008Lr-Gl for igraph-help@nongnu.org; Sat, 29 Oct 2016 15:33:44 -0400 Received: by mail-it0-x231.google.com with SMTP id m138so25557935itm.1 for ; Sat, 29 Oct 2016 12:33:44 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:sender:in-reply-to:references:from:date:message-id :subject:to:content-transfer-encoding; bh=5ExvlXuqbuiyY89kwjEBszajZrhGHc4jnmETjFlwheE=; b=KfMNjKuGXNeAPTjuIREJqDBpHv8FXHofy3r77A+nrNChpKvwZe/nE7o5ToqyXhoEe+ nzBN1KhFuQeOMN3My+RnTTNqglX7UnYYDylJgHLhzPRPdOKqwqGXG363NBT2Nyq2AScc LFVqcQtyTjYxSUYuUHwUtwsd3p+VqvBc34dzceTd9LO34O3Thq2n4dS0eXi+7bYfH8Nw GqhOAyR6jHWvMGWhK6DsxVqycUJtLik/i2yEWoCj/6O+X1W47QF09bzB/+R4bRM1ZBB4 alQ5kQQ/FboRwCCqLLD3tgnXTglGUOPuYALDSsJ/hYf+UiuqxKTO3TdMdIxhWzgdL5Yz mgNg== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:sender:in-reply-to:references:from :date:message-id:subject:to:content-transfer-encoding; bh=5ExvlXuqbuiyY89kwjEBszajZrhGHc4jnmETjFlwheE=; b=kTzzzQbuCet3EBR+9s1zZXkBFA1n1RKzrIOwyz8EXDC0NMEuacBu9q/kL3e77umQI4 qTwuRzqoWkOuzQg2SynLd+Fm37RDRwpoNdmNLdtiFyrU5ExoDUiWGPuZ0hqmD1aXmWV7 xrS1SzqAWh664ZlzuHeFsY6hH9z3rYOS+lYn4gqTUullWN7xfScvgLpEKL9wQKRDNZ4w LKvGibGm/fuVl93h27xqOg/L8zLyjniwCGehgdTRLejX+qN26w+0eMUn3LzwcSNp7eTI 2Q3xrNU3En1W1UBYGKGTvz2Ui7Y67OGMggi+hO/VMR5E/aSpzvR5VLbE4Tij4oNBVLyi HtGA== X-Gm-Message-State: ABUngvdqB6FpVTvOPU6gaEAkJlTEoRYuFIrZaC8W9kEzEw1edQlv5vr00fsHyvMyWrYhNg0yjZ6XFVe909083Q== X-Received: by 10.107.142.67 with SMTP id q64mr15684809iod.0.1477769623184; Sat, 29 Oct 2016 12:33:43 -0700 (PDT) MIME-Version: 1.0 Sender: ntamas@gmail.com Received: by 10.107.9.221 with HTTP; Sat, 29 Oct 2016 12:33:42 -0700 (PDT) In-Reply-To: References: From: Tamas Nepusz Date: Sun, 30 Oct 2016 03:33:42 +0800 X-Google-Sender-Auth: qONtXypPFFDgXzwpyRnC4BvGa-A Message-ID: To: Help for igraph users Content-Type: text/plain; charset=UTF-8 Content-Transfer-Encoding: quoted-printable X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:4001:c0b::231 Subject: Re: [igraph] Subgraph edges X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Sat, 29 Oct 2016 19:33:46 -0000 > Maybe stupid question, but when using subgraph.edges using an index, it > returns the wrong edge and/or re-names the vertices. It renames the vertices indeed; basically, vertex IDs in igraph's R interface are always in the range [1; N] if you have N vertices. > For a graph g, say I want to subgraph to the first edge, which in the cas= e > below is 1=E2=80=933. I try subgraph.edges(g, 1) but it returns the wrong= edge. It returns the correct edge, but since the vertex IDs in the subgraph have to be continuous, it "renames" vertex 3 into vertex 2. If you want to keep track of the vertex identities, assign a unique identifier attribute to each vertex; typically the "name" vertex attribute is used for this purpose: > set.seed(1) > g <- sample_gnm(5, 5) > g IGRAPH U--- 5 5 -- Erdos renyi (gnm) graph + attr: name (g/c), type (g/c), loops (g/l), m (g/n) + edges: [1] 1--3 2--3 1--4 1--5 4--5 > V(g)$name <- LETTERS[1:vcount(g)] > g IGRAPH UN-- 5 5 -- Erdos renyi (gnm) graph + attr: name (g/c), type (g/c), loops (g/l), m (g/n), name (v/c) + edges (vertex names): [1] A--C B--C A--D A--E D--E > subgraph.edges(g, 1) IGRAPH UN-- 2 1 -- Erdos renyi (gnm) graph + attr: name (g/c), type (g/c), loops (g/l), m (g/n), name (v/c) + edge (vertex names): [1] A--C Note that the "name" vertex attribute is special in the sense that if such an attribute is present, igraph will use this attribute when printing the vertices. T. From MAILER-DAEMON Sun Oct 30 09:46:23 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1c0qRL-0006ZW-GB for mharc-igraph-help@gnu.org; Sun, 30 Oct 2016 09:46:23 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:37093) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1c0qRK-0006V0-5N for igraph-help@nongnu.org; Sun, 30 Oct 2016 09:46:23 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1c0qRJ-0004z8-Bz for igraph-help@nongnu.org; Sun, 30 Oct 2016 09:46:22 -0400 Received: from mail-lf0-x234.google.com ([2a00:1450:4010:c07::234]:33433) by eggs.gnu.org with esmtps (TLS1.0:RSA_AES_128_CBC_SHA1:16) (Exim 4.71) (envelope-from ) id 1c0qRJ-0004ys-4V for igraph-help@nongnu.org; Sun, 30 Oct 2016 09:46:21 -0400 Received: by mail-lf0-x234.google.com with SMTP id m193so12019285lfm.0 for ; Sun, 30 Oct 2016 06:46:20 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:from:date:message-id:subject:to; bh=cKb5jnTD9bkGCjt5HTN05FWZaVigd7q6zFLqMl6L1SU=; b=kXVPjJLNozetWqs+DKhocFlyONpXZCajscEcimI7yGEeuWGWTkpgnftybqrZTnxeHZ Jr2Vbh82QmuM7L0sr9o04l4oyUdNJ5Fqm+ASaTP6zEFELaMzssJs3EfK2pARdsC9+qOS b6M0+mXjoWVIeemYuz32UDN00+5lncLJwHic6ecRddrfIc9niwzIVowxuhZ+dAl4e5/7 rXAmVQDa50p7Q0UaieOR4juFAnxOCYjTfM1weyfmjEwPofz0VknO5BozjvJNRyR00t+w 3eWu/EYh1frdLiJbmzap+uhe6AXuEniiA/W8UVfNPYwKbB5KwU0RbUIBo9XPRWq9Ombx IwAQ== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:from:date:message-id:subject:to; bh=cKb5jnTD9bkGCjt5HTN05FWZaVigd7q6zFLqMl6L1SU=; b=V8lnr8BmwtgrJ8awJuRVRdRc5hKlBJLqodPqozDfRbTPUJUUEb465oyAOlc7Kt8Faj sY6vOSpU6J85MtbNCGVBi66iZgAvFYecZ+YHpfGCgTHGdXhMFKc2N2YX2OH9PsDlvNT0 zlKRXwtLSujgwEGI3N2yBSmb4mX1Xec8VE3UcByzybZoZmXw5pv/aFXEGwzfKAr6mU9o 404jQpZwWAxK/Cju0NrFpO6YJB9DQ5nIpEBrwj/D94sLta/7DQzUouDLARIG8LUJufhC MQVOvylIFNNJD/4+CCMgRZDFdkEa8Ej4phVM2g31rwaZb6BzpcS6bdUnl1ka5RueHGYJ +MYg== X-Gm-Message-State: ABUngvd6LCLYt0epOtnO4MCg9DpLk6CrS7llsFYUEftnz61KmuCZgqaZyW+JTjltAJ0amKJiXN/dUQeVHFAr5g== X-Received: by 10.25.141.19 with SMTP id p19mr14328451lfd.56.1477835178641; Sun, 30 Oct 2016 06:46:18 -0700 (PDT) MIME-Version: 1.0 Received: by 10.25.202.10 with HTTP; Sun, 30 Oct 2016 06:46:18 -0700 (PDT) From: Giulia Rossello Date: Sun, 30 Oct 2016 14:46:18 +0100 Message-ID: To: igraph-help@nongnu.org Content-Type: multipart/alternative; boundary=001a11402228dc10130540155081 X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2a00:1450:4010:c07::234 Subject: [igraph] plot graph with color of nodes as node out-degree + colorbar X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Sun, 30 Oct 2016 13:46:23 -0000 --001a11402228dc10130540155081 Content-Type: text/plain; charset=UTF-8 Dear all, I am trying to plot a graph using a color scale corresponding to node's out-degree. Moreover, I would like to create a colorbar at the bottom of the plot for with the corresponding color scale of node's out-degree. Here what I am doing: #ALL indegree<-degree(all, v = V(all), mode = c("in")) outdegree<-degree(all, v = V(all), mode = c("out")) V(all)$size <- indegree+2 V(all)$frame.color <- "white" l<-layout_with_fr(all) E(all)$arrow.size <- .09 E(all)$edge.color <- "gray80" E(all)$width <- 1+E(all)$weight/max(E(all)$weight) V(all)$color<-rainbow(length(outdegree))[rank(outdegree)] pdf(paste(dr[1],year[1],"-",year[length(year)],field[1],"allnet.pdf")) plot(all, layout=l,vertex.label=NA) dev.off() Do you have some suggestions? Thank you in advance --001a11402228dc10130540155081 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
Dear all,
I am trying to plot a graph using= a color scale corresponding to node's out-degree.
Moreover, = I would like to create a colorbar at the bottom of the plot for with the co= rresponding color scale of node's out-degree.
Here what I am = doing:

#ALL
indegree<-degree(all, v = =3D V(all), mode =3D c("in"))
outdegree<-degree(all,= v =3D V(all), mode =3D c("out"))

V(all)= $size <- indegree+2
V(all)$frame.color <- "white"=
l<-layout_with_fr(all)
E(all)$arrow.size <- .09<= /div>
E(all)$edge.color <- "gray80"
E(all)$width= <- 1+E(all)$weight/max(E(all)$weight)
V(all)$color<-rainbo= w(length(outdegree))[rank(outdegree)]

pdf(paste(dr= [1],year[1],"-",year[length(year)],field[1],"allnet.pdf"= ;))

plot(all, layout=3Dl,vertex.label=3DNA)
<= div>dev.off()


Do you have some sugg= estions?
Thank you in advance
--001a11402228dc10130540155081-- From MAILER-DAEMON Mon Oct 31 12:34:36 2016 Received: from list by lists.gnu.org with archive (Exim 4.71) id 1c1FXg-0006dG-58 for mharc-igraph-help@gnu.org; Mon, 31 Oct 2016 12:34:36 -0400 Received: from eggs.gnu.org ([2001:4830:134:3::10]:45000) by lists.gnu.org with esmtp (Exim 4.71) (envelope-from ) id 1c1FXd-0006bH-5C for igraph-help@nongnu.org; Mon, 31 Oct 2016 12:34:34 -0400 Received: from Debian-exim by eggs.gnu.org with spam-scanned (Exim 4.71) (envelope-from ) id 1c1FXb-0005Ul-HX for igraph-help@nongnu.org; Mon, 31 Oct 2016 12:34:33 -0400 Received: from mail-qt0-x230.google.com ([2607:f8b0:400d:c0d::230]:35456) by eggs.gnu.org with esmtps (TLS1.0:RSA_AES_128_CBC_SHA1:16) (Exim 4.71) (envelope-from ) id 1c1FXb-0005UN-9Q for igraph-help@nongnu.org; Mon, 31 Oct 2016 12:34:31 -0400 Received: by mail-qt0-x230.google.com with SMTP id c47so29901356qtc.2 for ; Mon, 31 Oct 2016 09:34:30 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:in-reply-to:references:from:date:message-id:subject:to; bh=02aGK+bHplqv9PwxH2GEIYTBjp0r49A1Pc0OxXVOebI=; b=nPHabItGa5CaFgNeqDB9ynO/SlTjZvlYdG0vJ/rLE0Y10J6IvXmuwrjmAF+qrTA8Xm 8XHrZvYZmPwx3/S7eYY0W5E3ezN0lRjN9XaTZs2sQMILtDP7XDRtY55ZrvHzjYRdki4q bryoe7Eys1GGVDNLKOgKXud6vxtLOwRw3QaK11wM4S+B0Wr75gz7OWAQaMLImRCSXgVJ crIsl0UzHJVyCQkr7eS4KctWTe8mSXwlDhVFkM0f2Ds51L5mcJZD73yHzBh4bJL6Hl33 v8cZEGW3Vrf69ESVoPeL0bCKwGXn6e4KTWAwnC07C9dPpJnwjtKiU/fsfNyzjJXH8MM5 HuOg== X-Google-DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=1e100.net; s=20130820; h=x-gm-message-state:mime-version:in-reply-to:references:from:date :message-id:subject:to; bh=02aGK+bHplqv9PwxH2GEIYTBjp0r49A1Pc0OxXVOebI=; b=atGvpSN6JyaxRMxRtBLOrbZFdoGjGVN2CVWGVue0fX9HrBj2AOAGtIP5CSk4WpBtjm tCGU9D7eZh9O2ybNFGKza6+lquJCofRnRgm6IkIVElhIA3YZtv2o46O7pzkIv5cNCbsg McH+JCLMVaPMFcBvl2eVHFlqLs6hkD5ZXDBlz8EVMC9ZKPvO2iRyqxZXDutB/KvUl/c1 qoTcidTzMaz24kwem1DrfRclkYTd6hKJb4yjer0NUtTr6ICxqIsEAD0adXy+OiVcBc5s MXOD3hN5vR3nyIDQLpx3dsGBeY5JNnSZ7LoeS5tlM17jD4/qPVPNl/ippUMaN/uRzDzg EJpw== X-Gm-Message-State: ABUngvfn97ZpGGnOS5hGTSossm88Ngq6dpfZPihUOKVYAx5/PqlbeLp0G4tW31LOVwVX0XGDeTycrZdLFoARUA== X-Received: by 10.237.41.196 with SMTP id o62mr25543635qtd.122.1477931670295; Mon, 31 Oct 2016 09:34:30 -0700 (PDT) MIME-Version: 1.0 Received: by 10.12.164.66 with HTTP; Mon, 31 Oct 2016 09:33:49 -0700 (PDT) In-Reply-To: References: From: George Vega Yon Date: Mon, 31 Oct 2016 09:33:49 -0700 Message-ID: To: Help for igraph users , giuliarossello@gmail.com Content-Type: multipart/mixed; boundary=94eb2c1259223610e305402bc85a X-detected-operating-system: by eggs.gnu.org: GNU/Linux 2.2.x-3.x [generic] X-Received-From: 2607:f8b0:400d:c0d::230 Subject: Re: [igraph] plot graph with color of nodes as node out-degree + colorbar X-BeenThere: igraph-help@nongnu.org X-Mailman-Version: 2.1.21 Precedence: list List-Id: Help for igraph users List-Unsubscribe: , List-Archive: List-Post: List-Help: List-Subscribe: , X-List-Received-Date: Mon, 31 Oct 2016 16:34:35 -0000 --94eb2c1259223610e305402bc85a Content-Type: multipart/alternative; boundary=94eb2c1259223610df05402bc858 --94eb2c1259223610df05402bc858 Content-Type: text/plain; charset=UTF-8 Hi there, Here is an example using netdiffuseR::drawColorKey (either from CRAN or http://github.com/USCCANA/netdiffuseR), the color key is on the right, but if you want you can take that function and tweak it a little bit so you can have it on the bottom. HIH set.seed(1231) library(igraph) library(netdiffuseR) all <- barabasi.game(100, m=2) indegree<-degree(all, v = V(all), mode = c("in")) outdegree<-degree(all, v = V(all), mode = c("out")) V(all)$size <- (indegree+2)/2 V(all)$frame.color <- "white" l<-layout_with_fr(all) E(all)$arrow.size <- .09 E(all)$edge.color <- "gray80" E(all)$width <- 1+E(all)$weight/max(E(all)$weight) # Color scale [0,1] col <- (indegree - min(indegree))/(max(indegree) - min(indegree)) # Color using blues9 V(all)$color<- rgb(colorRamp(blues9)(col), maxColorValue = 255) # rainbow(length(outdegree))[rank(outdegree)] # pdf(paste(dr[1],year[1],"-",year[length(year)],field[1],"allnet.pdf")) plot(all, layout=l,vertex.label=NA) netdiffuseR::drawColorKey( indegree, nlevels=5, color.palette=colorRampPalette(blues9)(5), main="Indegree") # dev.off() George G. Vega Yon +1 (626) 381 8171 http://cana.usc.edu/vegayon On Sun, Oct 30, 2016 at 6:46 AM, Giulia Rossello wrote: > Dear all, > I am trying to plot a graph using a color scale corresponding to node's > out-degree. > Moreover, I would like to create a colorbar at the bottom of the plot for > with the corresponding color scale of node's out-degree. > Here what I am doing: > > #ALL > indegree<-degree(all, v = V(all), mode = c("in")) > outdegree<-degree(all, v = V(all), mode = c("out")) > > V(all)$size <- indegree+2 > V(all)$frame.color <- "white" > l<-layout_with_fr(all) > E(all)$arrow.size <- .09 > E(all)$edge.color <- "gray80" > E(all)$width <- 1+E(all)$weight/max(E(all)$weight) > V(all)$color<-rainbow(length(outdegree))[rank(outdegree)] > > pdf(paste(dr[1],year[1],"-",year[length(year)],field[1],"allnet.pdf")) > > plot(all, layout=l,vertex.label=NA) > dev.off() > > > Do you have some suggestions? > Thank you in advance > > _______________________________________________ > igraph-help mailing list > igraph-help@nongnu.org > https://lists.nongnu.org/mailman/listinfo/igraph-help > > --94eb2c1259223610df05402bc858 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
Hi there,

Here is an example using netd= iffuseR::drawColorKey (either from CRAN or http://github.com/USCCANA/netdiffuseR), the color key= is on the right, but if you want you can take that function and tweak it a= little bit so you can have it on the bottom.

HIH<= /div>

set.seed(1231)

libra= ry(igraph)
library(netdiffuseR)

all <= - barabasi.game(100, m=3D2)

indegree<-degree(al= l, v =3D V(all), mode =3D c("in"))
outdegree<-degree= (all, v =3D V(all), mode =3D c("out"))

V= (all)$size <- (indegree+2)/2
V(all)$frame.color <- "wh= ite"
l<-layout_with_fr(all)
E(all)$arrow.size &= lt;- .09
E(all)$edge.color <- "gray80"
E(a= ll)$width <- 1+E(all)$weight/max(E(all)$weight)

# Color scale [0,1]
col <- (indegree - min(indegree))/(max(in= degree) - min(indegree))

# Color using blues9
V(all)$color<- rgb(colorRamp(blues9)(col), maxColorValue =3D 255) = # rainbow(length(outdegree))[rank(outdegree)]

# pd= f(paste(dr[1],year[1],"-",year[length(year)],field[1],"allne= t.pdf"))

plot(all, layout=3Dl,vertex.label=3D= NA)
netdiffuseR::drawColorKey(
=C2=A0 indegree, nlevels= =3D5,
=C2=A0 color.palette=3DcolorRampPalette(blues9)(5),
=C2=A0 main=3D"Indegree")
# dev.off()


George G. Vega Yon
+1 (626) 381 8171
http://cana.usc.edu/v= egayon

On Sun, Oct 30, 2016 at 6:46 AM, Giulia Ross= ello <giuliarossello@gmail.com> wrote:
Dear all,
I am trying t= o plot a graph using a color scale corresponding to node's out-degree.<= /div>
Moreover, I would like to create a colorbar at the bottom of the = plot for with the corresponding color scale of node's out-degree.
=
Here what I am doing:

#ALL
indegree= <-degree(all, v =3D V(all), mode =3D c("in"))
outdeg= ree<-degree(all, v =3D V(all), mode =3D c("out"))
V(all)$size <- indegree+2
V(all)$frame.color <= - "white"
l<-layout_with_fr(all)
E(all)$ar= row.size <- .09
E(all)$edge.color <- "gray80"
E(all)$width <- 1+E(all)$weight/max(E(all)$weight)
V(all)$color<-rainbow(length(outdegree))[rank(outdegree)]

pdf(paste(dr[1],year[1],"-",year[length(yea= r)],field[1],"allnet.pdf"))

plot(al= l, layout=3Dl,vertex.label=3DNA)
dev.off()


Do you have some suggestions?
Thank you in adva= nce

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igraph-help@nongnu.org
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