Computes betweenness centrality based on randomized shortest paths
of each node in a network
(Please see and cite Kivimaki et al., 2016)
Usage
rspbc(A, beta = 0.01, comm = NULL)
Arguments
A
An adjacency matrix of network data
beta
Sets the beta parameter.
Defaults to 0.01 (recommended).
Beta > 0.01 measure gets closer to weighted
betweenness centrality (10) and beta < 0.01
measure gets closer to degree (.0001)
comm
Vector.
Community vector containing a value for each node.
Computes "bridge" RSPBC, where the number of times
a node is used on a random path between to another community
Value
A vector of randomized shortest paths betweenness
centrality values for each node in the network
References
Kivimaki, I., Lebichot, B., Saramaki, J., & Saerens, M. (2016).
Two betweenness centrality measures based on Randomized Shortest Paths.
Scientific Reports, 6, 19668.