\name{clusteringCoefAppr} \alias{clusteringCoefAppr} \title{Approximate clustering coefficient for an undirected graph} \description{Approximate clustering coefficient for an undirected graph } \usage{ clusteringCoefAppr(g, k=length(nodes(g)), Weighted=FALSE, vW=degree(g)) } \arguments{ \item{g}{an instance of the \code{graph} class } \item{Weighted}{calculate weighted clustering coefficient or not} \item{vW}{vertex weights to use when calculating weighted clustering coefficient} \item{k}{parameter controls total expected runtime} } \details{ It is quite expensive to compute cluster coefficient and transitivity exactly for a large graph by computing the number of triangles in the graph. Instead, \code{clusteringCoefAppr} samples triples with appropriate probability, returns the ratio between the number of existing edges and the number of samples. MORE ABOUT CHOICE OF K. See reference for more details. } \value{ Approximated clustering coefficient for graph \code{g}. } \references{ Approximating Clustering Coefficient and Transitivity, T. Schank, D. Wagner, Journal of Graph Algorithms and Applications, Vol. 9, No. 2 (2005). } \author{Li Long } \seealso{clusteringCoef, transitivity, graphGenerator} \examples{ con <- file(system.file("XML/conn.gxl",package="RBGL")) g <- fromGXL(con) close(con) k = length(nodes(g)) cc <- clusteringCoefAppr(g, k) ccw1 <- clusteringCoefAppr(g, k, Weighted=TRUE) vW <- c(1, 1, 1, 1, 1,1, 1, 1) ccw2 <- clusteringCoefAppr(g, k, Weighted=TRUE, vW) } \keyword{ models }