cluster_walktrap {igraph} | R Documentation |
Community structure via short random walks
Description
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.
Usage
cluster_walktrap(
graph,
weights = NULL,
steps = 4,
merges = TRUE,
modularity = TRUE,
membership = TRUE
)
Arguments
graph |
The input graph, edge directions are ignored in directed graphs. |
weights |
The weights of the edges. It must be a positive numeric vector,
|
steps |
The length of the random walks to perform. |
merges |
Logical scalar, whether to include the merge matrix in the result. |
modularity |
Logical scalar, whether to include the vector of the
modularity scores in the result. If the |
membership |
Logical scalar, whether to calculate the membership vector for the split corresponding to the highest modularity value. |
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
Value
cluster_walktrap()
returns a communities()
object, please see the communities()
manual page for details.
Author(s)
Pascal Pons (http://psl.pons.free.fr/) and Gabor Csardi csardi.gabor@gmail.com for the R and igraph interface
References
Pascal Pons, Matthieu Latapy: Computing communities in large networks using random walks, https://arxiv.org/abs/physics/0512106
See Also
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.
Community detection
as_membership()
,
cluster_edge_betweenness()
,
cluster_fast_greedy()
,
cluster_fluid_communities()
,
cluster_infomap()
,
cluster_label_prop()
,
cluster_leading_eigen()
,
cluster_leiden()
,
cluster_louvain()
,
cluster_optimal()
,
cluster_spinglass()
,
compare()
,
groups()
,
make_clusters()
,
membership()
,
modularity.igraph()
,
plot_dendrogram()
,
split_join_distance()
,
voronoi_cells()
Examples
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)