# Using igraph: community membership of components built by decompose.graph()

I would appreciate help with using `decompose.graph`, community detection functions from `igraph` and `lapply`.

I have an igraph object G with vertex attribute "label" and edge attribute "weight". I want to calculate community memberships using different functions from igraph, for simplicity let it be `walktrap.community`.

This graph is not connected, that is why I decided to decompose it into connected components and run `walktrap.community` on each component, and afterwards add a community membership vertex attribute to the original graph G.

I am doing currently the following

``````comps <- decompose.graph(G,min.vertices=2)
communities <- lapply(comps,walktrap.community)
``````

At this point I get stuck since I get the list object with the structure I cannot figure out. The documentation on `decompose.graph` tells only that it returns list object, and when I use `lapply` on the result I get completely confused. Moreover, the communities are numbered from 0 in each component, and I don't know how to supply `weights` parameter into `walktrap.community` function.

If it were not for the components, I would have done the following:

``````wt <- walktrap.community(G, modularity=TRUE, weights=E(G)\$weight)
wmemb <- community.to.membership(G, wt\$merges,steps=which.max(wt\$modularity)-1)
V(G)\$"walktrap" <- wmemb\$membership
``````

-

You could use a loop:

``````library(igraph)
set.seed(2)
G <- erdos.renyi.game(100, 1/50)
comps <- decompose.graph(G,min.vertices=2)
length(comps)  # 2 components, in this example
for(i in seq_along(comps)) { # For each subgraph comps[[i]]
wt <- walktrap.community(comps[[i]], modularity=TRUE, weights=E(comps[[i]])\$weight)
wmemb <- community.to.membership(comps[[i]], wt\$merges,steps=which.max(wt\$modularity)-1)
V(comps[[i]])\$"walktrap" <- wmemb\$membership
}
``````

It is possible to do it with `lapply` and `mapply`, but it is less readable.

``````comps <- decompose.graph(G,min.vertices=2)
wt <- lapply( comps, function(u)
walktrap.community(u, modularity=TRUE, weights=E(u)\$weight)
)
wmemb <- mapply(
function(u,v) community.to.membership(u, v\$merges,steps=which.max(v\$modularity)-1),
comps, wt,
SIMPLIFY=FALSE
)
comps <- mapply(
function(u,v) { V(u)\$"walktrap" <- v\$membership; u },
comps, wmemb,
SIMPLIFY=FALSE
)
``````
-
Thanks a lot for such a quick and precise reply. I do agree that the first option looks much more readable, besides I still don't feel comfortable using "*apply". I have a question about assigning the results to the original graph: `for (i in seq_along(comps)){ for (j in (seq_along(V(comps[[i]]))-1)){ cur <- V(comps[[i]])[j]\$id V(G)[V(G)\$id==cur]\$"walktrap"<-V(comps[[i]])[j]\$"walktrap" } }` , where "id" is the unique label on the vertex set. Do you know whether it is the only way to do it? –  npobedina Feb 13 '12 at 12:06