This function tries to find densely connected subgraphs, also called communities in a graph via random walks. The idea is that short random walks tend to stay in the same community.
cluster_walktrap(
graph,
weights = NULL,
steps = 4,
merges = TRUE,
modularity = TRUE,
membership = TRUE
)The input graph, edge directions are ignored in directed graphs.
The weights of the edges. It must be a positive numeric vector,
NULL or NA. If it is NULL and the input graph has a
‘weight’ edge attribute, then that attribute will be used. If
NULL and no such attribute is present, then the edges will have equal
weights. Set this to NA if the graph was a ‘weight’ edge
attribute, but you don't want to use it for community detection. Larger edge
weights increase the probability that an edge is selected by the random
walker. In other words, larger edge weights correspond to stronger connections.
The length of the random walks to perform.
Logical scalar, whether to include the merge matrix in the result.
Logical scalar, whether to include the vector of the
modularity scores in the result. If the membership argument is true,
then it will be always calculated.
Logical scalar, whether to calculate the membership vector for the split corresponding to the highest modularity value.
cluster_walktrap returns a communities
object, please see the communities manual page for details.
This function is the implementation of the Walktrap community finding algorithm, see Pascal Pons, Matthieu Latapy: Computing communities in large networks using random walks, https://arxiv.org/abs/physics/0512106
Pascal Pons, Matthieu Latapy: Computing communities in large networks using random walks, https://arxiv.org/abs/physics/0512106
See communities on getting the actual membership
vector, merge matrix, modularity score, etc.
modularity and cluster_fast_greedy,
cluster_spinglass,
cluster_leading_eigen,
cluster_edge_betweenness, cluster_louvain,
and cluster_leiden for other community detection
methods.
# NOT RUN {
g <- make_full_graph(5) %du% make_full_graph(5) %du% make_full_graph(5)
g <- add_edges(g, c(1,6, 1,11, 6, 11))
cluster_walktrap(g)
# }
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