Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I would like to create a co-authorship network using igraph .

My data are organized in a data.frame which looks like that:

DF1 <- cbind(Papers =  paste('Paper', 1:5, sep = ''),
             Author1 = c('A', 'D', 'C', 'C', 'C'),
             Author2 = c('B', 'C', 'F', NA, 'F'),
             Author3 = c('C', 'E', NA, NA, 'D'))

I would like to create an Edge list which looks like this:

   Vertex1 Vertex2
        A       B
        D       C
        C       F
        C       F
        A       C
        D       E
        C       D
        B       C
        C       E
        F       D

Is there anyway to do this in R (igraph for example)

The following function does the trick but for large dataset (over 5,000 papers) it takes too long to run

Fun_DFtoEdgeList <- function (Inputdataframe)
{

  ## This function create an edge list to create a network
  ## Input : Dataframe with UNIQUE VALUES !!!!

  ResEdgeList <- data.frame(Vertex1 = c('--'), Vertex2 = c('--'))


  for (i in 1 : (ncol(Inputdataframe)-1))
  {
    for (j in 2: (ncol(Inputdataframe)))
    {
      if (i !=j)     
      {
        #print(paste(i, j, sep ='--'))

        ToAppend <- data.frame(cbind(Inputdataframe[,i], Inputdataframe[,j]))
        names(ToAppend) <- names(ResEdgeList)
        #print(ToAppend)

        ResEdgeList <- rbind(ResEdgeList, ToAppend)
      }
    }

  }

  ResEdgeList <- data.frame(ResEdgeList[-1,], stringsAsFactors = FALSE)
  ResEdgeList<- subset(ResEdgeList, (is.na(Vertex1) == FALSE ) & (is.na(Vertex2) == FALSE ))  
  ResEdgeList
}


Fun_DFtoEdgeList (DF1[,-1])

`` Any help appreciated. (I had previously posted this question under different heading but am told that I wasn't clear enough)

share|improve this question
add comment

2 Answers

up vote 1 down vote accepted

There might be a better way to do this, but try combn, it produces all unique combinations:

DF1 <- cbind(Papers =  paste('Paper', 1:5, sep = ''),
             Author1 = c('A', 'D', 'C', 'C', 'C'),
             Author2 = c('B', 'C', 'F', NA, 'F'),
             Author3 = c('C', 'E', NA, NA, 'D'))

require(igraph)
l=apply(DF1[,-1],MARGIN=1,function(x) na.omit(data.frame(t(combn(x,m=2)))))
df=do.call(rbind,l)
g=graph.data.frame(df,directed=F)
plot(g)
share|improve this answer
    
thanks. exactly what I needed –  user1043144 Jul 3 '12 at 9:47
add comment

Your code does not produce the data you give because it is iterating over the "Paper" column. It will also prove slow because everytime you append to an existing object, R has to take another copy of the entire object...when you do this iteratively, things slow to a crawl. Looking at your output, I think this is does what you want:

#First, creat all combos of the columns you want. I don't think you want to include the "Paper" column?

x <- combn(2:4,2)
#-----
     [,1] [,2] [,3]
[1,]    2    2    3
[2,]    3    4    4

#next use apply to go through each pair:
apply(x, 2, function(z) data.frame(Vertex1 = DF1[, z[1]], Vertex2 = DF1[, z[2]]))
#-----
[[1]]
  Vertex1 Vertex2
1       A       B
2       D       C
3       C       F
4       C    <NA>
5       C       F
....
#So use do.call to rbind them together:

out <- do.call("rbind", 
        apply(x, 2, function(z) data.frame(Vertex1 = DF1[, z[1]], Vertex2 = DF1[, z[2]])))

#Finally, filter out the rows with NA:
out[complete.cases(out),]
#-----
   Vertex1 Vertex2
1        A       B
2        D       C
3        C       F
5        C       F
6        A       C
7        D       E
10       C       D
11       B       C
12       C       E
15       F       D

Finally, see how this scales to a larger problem:

#Just over a million papers
zz <- matrix(sample(letters, 1000002, TRUE), ncol = 3)
x <- combn(1:3, 2)
system.time(do.call("rbind", 
                    apply(x, 2, function(z) data.frame(Vertex1 = zz[, z[1]], Vertex2 = zz[, z[2]]))))
#-----
user  system elapsed 
  1.332   0.144   1.482

1.5 seconds seems pretty reasonable to me?

share|improve this answer
    
thank you. I learned a lot from the posting –  user1043144 Jul 3 '12 at 9:47
add comment

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.