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I have an edgelist for a two mode network, similar to this:

person  Event
Amy     football_game
Sam     picnic
Bob     art_show

I want to perform an analysis on this in R, but seemingly everything I try fails. Converting it to a one mode network runs into memory limitations, and I can't figure out how to analyze it as bipartite in either igraph or tnet.

In igraph, bipartite.projection gives me all FALSE, on the igraph object created using

net <- graph.edgelist(myobject)

On tnet, I can't convert the igraph net to a tnet one, and when I try to use the original data frame, it refuses because of duplicates in the graph.

So answers to any of the following would be super appreciated:

  1. How do I use the bipartite.mapping function?
  2. How do I input an igraph object into tnet?
  3. If all else fails, how I do I input a data frame with duplicate edges into tnet?

Sorry if these are basic questions, but there's very little documentation.



edgelist <- read.table(text="Person    Event
                             Amy       football
                             Bob       picnic
                             Sam       artshow", 
edgelist <- as.matrix(edgelist)

## Igraph Issues
igraph <- graph.edgelist(edgelist)
typevector <- bipartite.projection(igraph) 
# gets all FALSE

edgelist2 <- get.edgelist(igraph)
typevector <- bipartite.projection(edgelist2) 
# same thing

## tnet issues
tnet <- as.tnet(edgelist) 
# gives error: "There are duplicate events in the edgelist"
tnet <- as.tnet(edgelist2)
clusterMat <- clustering_local_tm(tnet)  
# gives error: "max not meaningful for factors"

onemode <- projecting_tm(tnet, method="Newman") 
# gives error: "arguments must have same length"
share|improve this question
Always try to post a reproducible example. It will help a lot. We have no idea what myobject are. – Simon O'Hanlon Mar 12 '13 at 17:31
Also, if anyone just has a tutorial or an example of tnet, that alone could help a lot. – Olga Mu Mar 12 '13 at 18:29
@user1888451 Tore Opsahl (the author) works through some examples on his website. – ndoogan Mar 12 '13 at 19:08

2 Answers 2

up vote 7 down vote accepted

In igraph a bipartite network is one that has a type vertex attribute. This attribute must be logical and must the TRUE for one of the node types and FALSE for the others. So to create a bipartite network from your edge list, you simply create a regular graph and then add the type vertex attribute:

edgelist <- read.table(text="Person    Event
                         Amy       football
                         Bob       picnic
                         Sam       artshow", 
igraph <-

V(igraph)$type <- V(igraph)$name %in% edgelist[,1]
# IGRAPH DN-B 6 3 -- 
# + attr: name (v/c), type (v/x)

The 'B' letter tells you that this is a bipartite graph. You can create the unipartite projections of this network via:

# $proj1
# IGRAPH UN-B 3 0 -- 
# + attr: name (v/c), type (v/x)
# $proj2
# IGRAPH UN-B 3 0 -- 
# + attr: name (v/c), type (v/x)

This will return a list of two graphs. If you think that the projection might be too big, you can first call the bipartite.projection.size function, this will give you the number of vertices and edges in both projections. The memory requirement for an igraph graph is (4m+2n)*8+O(1) bytes, where 'n' is the number of vertices and 'm' is the number of edges.

share|improve this answer
This is excellent, thank you! – Olga Mu Mar 14 '13 at 17:37
@Gabor i was trying to project a weighted biparite graph and i get the error negative vectors not allowed which crashes my R session...have you had this before? – user1317221_G Apr 7 '14 at 11:24
@user1317221_G: most likely your graph is not bipartite, i.e. you have connections between vertices of the same type. – Gabor Csardi Apr 7 '14 at 13:54
@Gabor Can you please tell how to visualize that graph. with two different kinds of nodes with different colors – koundy May 12 at 8:35
Set vertex color based on vertex type, e.g. V(g)$color <- V(g)$type + 1. – Gabor Csardi May 12 at 14:14

It sounds like the edge list is huge if these packages are having trouble. Or you're doing something they don't expect. Anyway, you can get a bipartite matrix without igraph/tnet/... and then these packages are fairly comfortable working with that.

Assuming your edgelist data file is TAB SEPARATED, is called, and actually has 2 items per line, and duplicate edges don't mean anything:

el <- read.table("", header=T, sep="\t")
uR <-unique(el[,1])   # all unique row labels
uC <- unique(el[,2])  # all unique colunm labels

mat <- matrix(0, length(uR), length(uC))  # initialize zeroed matrix
rownames(mat) <- uR  # name the rows
colnames(mat) <- uC  # name the columns

mat[el] <- 1   # fill edgelist indexed edges with a 1

Then mat is a bipartite matrix of, apparently, people to events. If this is TOO big, then you may want to exchange the matrix(0, ...) command with Matrix() from the Matrix package which results in a sparse matrix that is easier on memory. The bipartite matrix can be analyzed in the "sna" package. The "igraph" and "tnet" packages have functions to directly convert adjacency matrices to their desired formats.

If you want an adjacency matrix of the ROW nodes, then you can do

amat <- mat %*% t(mat)

and study that as a network of counts of co-occurrences of the row nodes in the col nodes using tools that are better for adjacency matrices.

share|improve this answer
Yes, it's huge. I tried making a sparse matrix before, to multiply it by its transpose and get a one-mode network, but that ran into a segfault error. It might work for two mode adj matrix calculations though... Thanks! – Olga Mu Mar 12 '13 at 18:27
How many unique actors (rows) and events (cols) are you dealing with? How much memory does the computer you are working with have? – ndoogan Mar 12 '13 at 18:38
vcount returns 3857659 nodes. I'm using virtual memory, but I don't immediately remember how much there is. Do you have suggestions for increasing it? I've been looking at bigmatrix (which didn't work the first time I tried it) and map reduce in R. – Olga Mu Mar 12 '13 at 18:53
Yikes! May I suggest reducing the data to something more manageable to answer your question? :) e.g. combining events, or taking a meaningful subset of actors or events. I don't know what 3.8 million refers to exactly (rows? columns? their sum?) but it's enormous either way. Consider also other options such as Pajek which is pretty good at working with very large networks. – ndoogan Mar 12 '13 at 19:02
That's what I feared, unfortunately. The number refers to both items (which I care about) and people who bought those items (don't care).If I could reduce it to just items, I think it could be manageable, but trying to get to one mode is impossible-- even sparse matrices run out of memory. I'll take a look at Pajek. – Olga Mu Mar 12 '13 at 19:30

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