Plot Statistics Associated with Graph Clusters
gclust.boxstats
creates side-by-side boxplots of graph statistics based on a hierarchical clustering of networks (cut into k
sets).
gclust.boxstats(h, k, meas, ...)
None
Actually, this function will work with any hclust
object and measure matrix; the data need not originate with social networks. For this reason, the clever may also employ this function in conjunction with sedist
or equiv.clust
to plot NLIs against clusters of positions within a graph.
Carter T. Butts buttsc@uci.edu
Butts, C.T., and Carley, K.M. (2001). “Multivariate Methods for Interstructural Analysis.” CASOS working paper, Carnegie Mellon University.
#Create some random graphs g<-rgraph(10,20,tprob=c(rbeta(10,15,2),rbeta(10,2,15))) #Find the Hamming distances between them g.h<-hdist(g) #Cluster the graphs via their Hamming distances g.c<-hclust(as.dist(g.h)) #Now display boxplots of density by cluster for a two cluster solution gclust.boxstats(g.c,2,gden(g))
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