How do I calculate weighted degree distributions with igraph in R?

Consider a dataframe `df` where the first two columns are node pairs and successive columns `V1`, `V2`, ..., `Vn` represent flows between the nodes (potentially 0, implying no edge for that column's network). I would like to conduct analysis on degree, community detection, and other network measures using the flows as weights.

Then to analyze the graph with respect to the weights in `V1` I do:

``````# create graph and explore unweighted degrees with respect to V1
g <- graph.data.frame( df[df\$V1!=0,] )
qplot(degree(g))
x <- 0:max(degree(g))
qplot(x,degree.distribution(g))

# set weights and explore weighted degrees using V1
E(g)\$weights <- E(g)\$V1
qplot(degree(g))
``````

The output from the third qplot is no different than the first. What am I doing wrong?

Update:

So `graph.strength` is what I am looking for, but `graph.strength(g)` in my case gives standard degree output followed by:

``````Warning message:
In graph.strength(g) :
At structural_properties.c:4928 :No edge weights for strength calculation,
normal degree
``````

I must be setting the weights incorrectly, is it not sufficient to do `E(g)\$weights <- E(g)\$V1` and why can `g\$weights` differ from `E(g)\$weights`?

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Re the difference between `g\$weights` and `E(g)\$weights`: `g\$weights` looks for a graph attribute named `weights`, `E(g)\$weights` looks for an edge attribute named `weights`. Incidentally, there is also `V(g)\$weights`, which looks for a vertex attribute named `weights`. –  Tamás Dec 1 '11 at 21:29
The graph.strength documentation (linked in question now) indicates it looks for the graph attribute named weight, however in my example once I fix the type to E(g)\$weight, `graph.strength` works as expected. Why? Does it first search for the graph attribute and then the edge attribute? –  mindless.panda Dec 1 '11 at 22:13
Looking for a graph attribute would not make sense since such an attribute would be attached to the graph itself and not the individual edges. `graph.strength` looks only for the edge attribute. The documentation says "if the graph has a `weight` edge attribute...", so I guess it is clear that you need an edge attribute here. –  Tamás Dec 2 '11 at 8:35
Right, I'll eventually learn to read. Thanks –  mindless.panda Dec 2 '11 at 13:13

The function `graph.strength` can be given a weights vector with the `weights` argument. I think what is going wrong in your code is that you should call the weights attribute `E(g)\$weight` not `E(g)\$weights`.

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+1 Embarassed, but grateful. =) –  mindless.panda Dec 1 '11 at 17:56

I created an equivalent `degree.distribution` function for weighted graphs for my own code by taking the `degree.distribution` code and making one change:

``````graph.strength.distribution <- function (graph, cumulative = FALSE, ...)
{
if (!is.igraph(graph)) {
stop("Not a graph object")
}
cs <- graph.strength(graph, ...)
hi <- hist(cs, -1:max(cs), plot = FALSE)\$density
if (!cumulative) {
res <- hi
}
else {
res <- rev(cumsum(rev(hi)))
}
res
}
``````
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This is indeed very useful. Would you mind adding it to the `igraph` wiki as well? This is the link to the appropriate wiki page: igraph.wikidot.com/r-recipes –  Tamás Dec 2 '11 at 8:36