def calculate_katz_centrality(graph):
"""
Compute the katz centrality for nodes.
"""
# if not graph.is_directed():
# raise nx.NetworkXError( \
# "katz_centrality() not defined for undirected graphs.")
print "\n\tCalculating Katz Centrality..."
print "\tWarning: This might take a long time larger pedigrees."
g = graph
A = nx.adjacency_matrix(g)
from scipy import linalg as LA
max_eign = float(np.real(max(LA.eigvals(A.todense()))))
print "\t-Max.Eigenvalue(A) ", round(max_eign, 3)
kt = nx.katz_centrality(g, tol=1.0e-4, alpha=1/max_eign-0.01, beta=1.0, max_iter=999999)
nx.set_node_attributes(g, 'katz', kt)
katz_sorted = sorted(kt.items(), key=itemgetter(1), reverse=True)
for key, value in katz_sorted[0:10]:
print "\t > ", key, round(value, 4)
return g, kt
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