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katz_centrality

katz_centrality(G, alpha=0.1, beta=1.0, max_iter=1000, tol=1e-06, nstart=None, normalized=True)

Compute the Katz centrality for the nodes of the graph G.

Katz centrality is related to eigenvalue centrality and PageRank. The Katz centrality for node i is

x_i = \alpha \sum_{j} A_{ij} x_j + \beta,

where A is the adjacency matrix of the graph G with eigenvalues \lambda.

The parameter \beta controls the initial centrality and

\alpha < \frac{1}{\lambda_{max}}.

Katz centrality computes the relative influence of a node within a network by measuring the number of the immediate neighbors (first degree nodes) and also all other nodes in the network that connect to the node under consideration through these immediate neighbors.

Extra weight can be provided to immediate neighbors through the parameter \beta. Connections made with distant neighbors are, however, penalized by an attenuation factor \alpha which should be strictly less than the inverse largest eigenvalue of the adjacency matrix in order for the Katz centrality to be computed correctly. More information is provided in [R175] .

Parameters :

G : graph

A NetworkX graph

alpha : float

Attenuation factor

beta : scalar or dictionary, optional (default=1.0)

Weight attributed to the immediate neighborhood. If not a scalar the dictionary must have an value for every node.

max_iter : integer, optional (default=1000)

Maximum number of iterations in power method.

tol : float, optional (default=1.0e-6)

Error tolerance used to check convergence in power method iteration.

nstart : dictionary, optional

Starting value of Katz iteration for each node.

normalized : bool, optional (default=True)

If True normalize the resulting values.

Returns :

nodes : dictionary

Dictionary of nodes with Katz centrality as the value.

Notes

This algorithm it uses the power method to find the eigenvector corresponding to the largest eigenvalue of the adjacency matrix of G. The constant alpha should be strictly less than the inverse of largest eigenvalue of the adjacency matrix for the algorithm to converge. The iteration will stop after max_iter iterations or an error tolerance of number_of_nodes(G)*tol has been reached.

When \alpha = 1/\lambda_{max} and \beta=1 Katz centrality is the same as eigenvector centrality.

References

[R175](1, 2) M. Newman, Networks: An Introduction. Oxford University Press, USA, 2010, p. 720.

Examples

>>> import math
>>> G = nx.path_graph(4)
>>> phi = (1+math.sqrt(5))/2.0 # largest eigenvalue of adj matrix
>>> centrality = nx.katz_centrality(G,1/phi-0.01)
>>> for n,c in sorted(centrality.items()):
...    print("%d %0.2f"%(n,c))
0 0.37
1 0.60
2 0.60
3 0.37