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My problem is very simple: I need to create an adjacency list/matrix from a list of edges.

I have an edge list stored in a csv document with column1 = node1 and column2 = node2 and I would like to convert this to a weighted adjacency list or a weighted adjacency matrix.

To be more precise, here's how the data looks like -where the numbers are simply node ids:


Any tips on how to achieve the conversion from this to a weighted adjacency list/matrix? This is how I resolved to do it previously, without success (courtesy of Dai Shizuka):

dat=read.csv(file.choose(),header=TRUE) # choose an edgelist in .csv file format
el=as.matrix(dat) # coerces the data into a two-column matrix format that igraph likes
g=graph.edgelist(el,directed=FALSE) # turns the edgelist into a 'graph object'

Thank you!

share|improve this question
Can you provide us with a small reproducible example and your possible attempts at coding this? – Roman Luštrik May 16 '13 at 10:38
This post may be helpful. – Arun May 16 '13 at 10:48
Thanks @Arun for pointing me to that post. It's indeed useful but if I'm not mistaken their data is already arranged in a matrix fashion whereas as you can see from the edited version of my question, I have a different input. By editing the post, I hope I have replied to Roman as well. – Milo May 16 '13 at 15:41
up vote 11 down vote accepted

This response uses base R only. The result is a standard matrix used to represent the adjacency matrix.

 el  <- cbind(a=1:5, b=5:1) #edgelist (a=origin, b=destination)
 mat <- matrix(0, 5, 5)
 mat[el] <- 1
 #    [,1] [,2] [,3] [,4] [,5]
 #[1,]    0    0    0    0    1
 #[2,]    0    0    0    1    0
 #[3,]    0    0    1    0    0
 #[4,]    0    1    0    0    0
 #[5,]    1    0    0    0    0

Here mat is your adjacency matrix defined from edgelist el, which is a simple cbind of the vectors 1:5 and 5:1.

If your edgelist includes weights, then you need a slightly different solution.

el <- cbind(a=1:5, b=5:1, c=c(3,1,2,1,1)) # edgelist (a=origin, b=destination, c=weight)
mat<-matrix(0, 5, 5)
for(i in 1:NROW(el)) mat[ el[i,1], el[i,2] ] <- el[i,3]  # SEE UPDATE
#     [,1] [,2] [,3] [,4] [,5]
#[1,]    0    0    0    0    3
#[2,]    0    0    0    1    0
#[3,]    0    0    2    0    0
#[4,]    0    1    0    0    0
#[5,]    1    0    0    0    0


Some time later I realized that the for loop (3rd line) in the previous weighted edgelist example is unnecessary. You can replace it with the following vectorized operation:

mat[el[,1:2]] <- el[,3]
share|improve this answer

The post on my website you mention in the question (https://sites.google.com/site/daishizuka/toolkits/sna/sna_data) uses the igraph package, so make sure that is loaded.

Moreover, I recently realized that igraph provides a much easier way to create a weighted adjacency matrix from edgelists, using graph.data.frame(). I've updated this on my site, but here is a simple example:

el=matrix(c('a','b','c','d','a','d','a','b','c','d'),ncol=2,byrow=TRUE) #a sample edgelist

That should do it. The sparse=FALSE argument tells it to show the 0s in the adjacency matrix. If you really don't want to use igraph, I think this is a clunky way to do it:

el=matrix(c('a','b','c','d','a','d','a','b','c','d'),ncol=2,byrow=TRUE) #a sample edgelist
lab=names(table(el)) #extract the existing node IDs
mat=matrix(0,nrow=length(lab),ncol=length(lab),dimnames=list(lab,lab)) #create a matrix of 0s with the node IDs as rows and columns
for (i in 1:nrow(el)) mat[el[i,1],el[i,2]]=mat[el[i,1],el[i,2]]+1 #for each row in the edgelist, find the appropriate cell in the empty matrix and add 1.
share|improve this answer
Note that for a weighted network, you will want to add a attr='weight' to the get.adjacency() call to have it return a weighted adjacency matrix instead of an unweighted version. – Keith Hughitt Jul 18 at 18:43

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