| spectrum {igraph} | R Documentation |
Eigenvalues and eigenvectors of the adjacency matrix of a graph
Description
Calculate selected eigenvalues and eigenvectors of a (supposedly sparse) graph.
Usage
spectrum(
graph,
algorithm = c("arpack", "auto", "lapack", "comp_auto", "comp_lapack", "comp_arpack"),
which = list(),
options = arpack_defaults()
)
Arguments
graph |
The input graph, can be directed or undirected. |
algorithm |
The algorithm to use. Currently only |
which |
A list to specify which eigenvalues and eigenvectors to calculate. By default the leading (i.e. largest magnitude) eigenvalue and the corresponding eigenvector is calculated. |
options |
Options for the ARPACK solver. See
|
Details
The which argument is a list and it specifies which eigenvalues and
corresponding eigenvectors to calculate: There are eight options:
Eigenvalues with the largest magnitude. Set
postoLM, andhowmanyto the number of eigenvalues you want.-
Eigenvalues with the smallest magnitude. Set
postoSMandhowmanyto the number of eigenvalues you want. Largest eigenvalues. Set
postoLAandhowmanyto the number of eigenvalues you want.Smallest eigenvalues. Set
postoSAandhowmanyto the number of eigenvalues you want.-
Eigenvalues from both ends of the spectrum. Set
postoBEandhowmanyto the number of eigenvalues you want. Ifhowmanyis odd, then one more eigenvalue is returned from the larger end. -
Selected eigenvalues. This is not (yet) implemented currently.
-
Eigenvalues in an interval. This is not (yet) implemented.
All eigenvalues. This is not implemented yet. The standard
eigenfunction does a better job at this, anyway.
Note that ARPACK might be unstable for graphs with multiple components, e.g. graphs with isolate vertices.
Value
Depends on the algorithm used.
For arpack a list with three entries is returned:
options |
See
the return value for |
values |
Numeric vector, the eigenvalues. |
vectors |
Numeric matrix, with the eigenvectors as columns. |
Author(s)
Gabor Csardi csardi.gabor@gmail.com
See Also
as_adj() to create a (sparse) adjacency matrix.
Centrality measures
alpha_centrality(),
betweenness(),
closeness(),
diversity(),
eigen_centrality(),
harmonic_centrality(),
hub_score(),
page_rank(),
power_centrality(),
strength(),
subgraph_centrality()
Examples
## Small example graph, leading eigenvector by default
kite <- make_graph("Krackhardt_kite")
spectrum(kite)[c("values", "vectors")]
## Double check
eigen(as_adj(kite, sparse = FALSE))$vectors[, 1]
## Should be the same as 'eigen_centrality' (but rescaled)
cor(eigen_centrality(kite)$vector, spectrum(kite)$vectors)
## Smallest eigenvalues
spectrum(kite, which = list(pos = "SM", howmany = 2))$values