hub_score {igraph} | R Documentation |
Kleinberg's hub and authority centrality scores.
Description
The hub scores of the vertices are defined as the principal eigenvector
of A A^T
, where A
is the adjacency matrix of the
graph.
Usage
hub_score(graph, scale = TRUE, weights = NULL, options = arpack_defaults())
authority_score(
graph,
scale = TRUE,
weights = NULL,
options = arpack_defaults()
)
Arguments
graph |
The input graph. |
scale |
Logical scalar, whether to scale the result to have a maximum score of one. If no scaling is used then the result vector has unit length in the Euclidean norm. |
weights |
Optional positive weight vector for calculating weighted
scores. If the graph has a |
options |
A named list, to override some ARPACK options. See
|
Details
Similarly, the authority scores of the vertices are defined as the principal
eigenvector of A^T A
, where A
is the adjacency matrix of
the graph.
For undirected matrices the adjacency matrix is symmetric and the hub scores are the same as authority scores.
Value
A named list with members:
vector |
The hub or authority scores of the vertices. |
value |
The corresponding eigenvalue of the calculated principal eigenvector. |
options |
Some information about the ARPACK computation, it has
the same members as the |
References
J. Kleinberg. Authoritative sources in a hyperlinked environment. Proc. 9th ACM-SIAM Symposium on Discrete Algorithms, 1998. Extended version in Journal of the ACM 46(1999). Also appears as IBM Research Report RJ 10076, May 1997.
See Also
eigen_centrality()
for eigenvector centrality,
page_rank()
for the Page Rank scores. arpack()
for
the underlining machinery of the computation.
Centrality measures
alpha_centrality()
,
betweenness()
,
closeness()
,
diversity()
,
eigen_centrality()
,
harmonic_centrality()
,
page_rank()
,
power_centrality()
,
spectrum()
,
strength()
,
subgraph_centrality()
Examples
## An in-star
g <- make_star(10)
hub_score(g)$vector
authority_score(g)$vector
## A ring
g2 <- make_ring(10)
hub_score(g2)$vector
authority_score(g2)$vector