The vertex and edge betweenness are (roughly) defined by the number of geodesics (shortest paths) going through a vertex or an edge.
estimate_betweenness(
graph,
vids = V(graph),
directed = TRUE,
cutoff,
weights = NULL,
nobigint = TRUE
)betweenness(
graph,
v = V(graph),
directed = TRUE,
weights = NULL,
nobigint = TRUE,
normalized = FALSE
)
edge_betweenness(graph, e = E(graph), directed = TRUE, weights = NULL)
The graph to analyze.
The vertices for which the vertex betweenness estimation will be calculated.
Logical, whether directed paths should be considered while determining the shortest paths.
The maximum path length to consider when calculating the betweenness. If zero or negative then there is no such limit.
Optional positive weight vector for calculating weighted
betweenness. If the graph has a weight
edge attribute, then this is
used by default. Weights are used to calculate weighted shortest paths,
so they are interpreted as distances.
Logical scalar, whether to use big integers during the
calculation. This is only required for lattice-like graphs that have very
many shortest paths between a pair of vertices. If TRUE
(the
default), then big integers are not used.
The vertices for which the vertex betweenness will be calculated.
Logical scalar, whether to normalize the betweenness
scores. If TRUE
, then the results are normalized according to
$$B^n=\frac{2B}{n^2-3n+2}$$, where
\(B^n\) is the normalized, \(B\) the raw betweenness, and \(n\)
is the number of vertices in the graph.
The edges for which the edge betweenness will be calculated.
A numeric vector with the betweenness score for each vertex in
v
for betweenness
.
A numeric vector with the edge betweenness score for each edge in e
for edge_betweenness
.
estimate_betweenness
returns the estimated betweenness scores for
vertices in vids
, estimate_edge_betweenness
the estimated edge
betweenness score for all edges; both in a numeric vector.
The vertex betweenness of vertex \(v\) is defined by
$$\sum_{i\ne j, i\ne v, j\ne v} g_{ivj}/g_{ij}$$
The edge betweenness of edge \(e\) is defined by
$$\sum_{i\ne j} g{iej}/g_{ij}.$$
betweenness
calculates vertex betweenness, edge_betweenness
calculates edge betweenness.
estimate_betweenness
only considers paths of length cutoff
or
smaller, this can be run for larger graphs, as the running time is not
quadratic (if cutoff
is small). If cutoff
is zero or negative
then the function calculates the exact betweenness scores.
estimate_edge_betweenness
is similar, but for edges.
For calculating the betweenness a similar algorithm to the one proposed by Brandes (see References) is used.
Freeman, L.C. (1979). Centrality in Social Networks I: Conceptual Clarification. Social Networks, 1, 215-239.
Ulrik Brandes, A Faster Algorithm for Betweenness Centrality. Journal of Mathematical Sociology 25(2):163-177, 2001.
# NOT RUN {
g <- sample_gnp(10, 3/10)
betweenness(g)
edge_betweenness(g)
# }
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