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.

For example, how would I calculate, for each vertex, the percentage of ties directed outward toward males?

g <- erdos.renyi.game(20, .3, type=c("gnp"), directed = TRUE)
V(g)$male <- rbinom(20,1,.5)
V(g)$male[10] <- NA
share|improve this question
add comment

1 Answer

up vote 3 down vote accepted

A possible (not necessary optimal) solution is as follows (this is one single line, I just break it down for sake of readability):

unlist(lapply(get.adjlist(g, mode="out"),
       function (neis) {
           sum(V(g)[neis]$male, na.rm=T)
)) / degree(g, mode="out")

Now let's break it up into smaller pieces. First, we get the adjacency list of the graph using get.adjlist(g, mode="out"). This gives you a list of vectors, each vector containing the out-neighbors of a vertex. Then we apply a function to each vector in this list using lapply. The function being applied is as follows:

function (neis) {
    sum(V(g)[neis]$male, na.rm=T)

The function simply takes the neighbors of a node in neis and uses that to select a subset of vertices from the entire vertex set V(g). Then the male attribute is retrieved for this vertex subset and the values are summed, removing NA values on the fly. Essentially, this function gives you the number of males in neis.

Now, returning to our original expression, we have applied this function to the adjacency list of the graph using lapply, obtaining a list of numbers, each number containing the number of male neighbors of a given vertex. We convert this list into a single R vector using unlist and divide it elementwise by the out-degrees of the vertices to obtain the ratios.

share|improve this answer
Thanks Tamas! Unless I am mistaken, when the male indicator is missing, it has the same result as if male=0... adding the following bold code to function neis might do it right? { sum(V(g)[neis]$male, na.rm=T / sum(is.na(V(g)[neis]$male) } –  Michael Bishop Oct 4 '11 at 21:46
that should be: sum(!is.na(V(g)[neis]$male) –  Michael Bishop Oct 5 '11 at 1:35
Yes, that should be OK. Watch out for divisions by zero, however; in your scenario, I think it makes sense to think of the numerator as being "strongly zero". The easiest way is probably to replace NaN values in the list with zeros afterwards. –  Tamás Oct 5 '11 at 10:35
add comment

Your Answer


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.