Use this if you are using igraph from R
| alpha_centrality {igraph} | R Documentation | 
alpha_centrality calculates the alpha centrality of some (or all)
vertices in a graph.
alpha_centrality(
  graph,
  nodes = V(graph),
  alpha = 1,
  loops = FALSE,
  exo = 1,
  weights = NULL,
  tol = 1e-07,
  sparse = TRUE
)
| graph | The input graph, can be directed or undirected | 
| nodes | Vertex sequence, the vertices for which the alpha centrality values are returned. (For technical reasons they will be calculated for all vertices, anyway.) | 
| alpha | Parameter specifying the relative importance of endogenous versus exogenous factors in the determination of centrality. See details below. | 
| loops | Whether to eliminate loop edges from the graph before the calculation. | 
| exo | The exogenous factors, in most cases this is either a constant – the same factor for every node, or a vector giving the factor for every vertex. Note that too long vectors will be truncated and too short vectors will be replicated to match the number of vertices. | 
| weights | A character scalar that gives the name of the edge attribute
to use in the adjacency matrix. If it is  | 
| tol | Tolerance for near-singularities during matrix inversion, see
 | 
| sparse | Logical scalar, whether to use sparse matrices for the calculation. The ‘Matrix’ package is required for sparse matrix support | 
The alpha centrality measure can be considered as a generalization of eigenvector centerality to directed graphs. It was proposed by Bonacich in 2001 (see reference below).
The alpha centrality of the vertices in a graph is defined as the solution of the following matrix equation:
x=\alpha A^T x+e,
where A is the (not necessarily symmetric) adjacency matrix of the
graph, e is the vector of exogenous sources of status of the
vertices and \alpha is the relative importance of the
endogenous versus exogenous factors.
A numeric vector contaning the centrality scores for the selected vertices.
Singular adjacency matrices cause problems for this algorithm, the routine may fail is certain cases.
Gabor Csardi csardi.gabor@gmail.com
Bonacich, P. and Lloyd, P. (2001). “Eigenvector-like measures of centrality for asymmetric relations” Social Networks, 23, 191-201.
eigen_centrality and power_centrality
# The examples from Bonacich's paper
g.1 <- graph( c(1,3,2,3,3,4,4,5) )
g.2 <- graph( c(2,1,3,1,4,1,5,1) )
g.3 <- graph( c(1,2,2,3,3,4,4,1,5,1) )
alpha_centrality(g.1)
alpha_centrality(g.2)
alpha_centrality(g.3,alpha=0.5)