GetEigenVectorCentr (SWIG)¶
-
GetEigenVectorCentr
(Graph, NIdEigenH, Eps=0.0001, MaxIter=100)
Computes eigenvector centrality of all nodes in Graph and stores it in NIdEigenH. Eigenvector Centrality of a node N is defined recursively as the average of centrality values of N’s neighbors in the network.
Parameters:
- Graph: undirected graph (input)
A Snap.py undirected graph
- NIdEigenH:
TIntFltH
, a hash table of int keys and float values (output) Hash table mapping node ids to their corresponding eigenvector centrality values.
- NIdEigenH:
- Eps: float (input)
Epsilon (stop when accumulated difference in eigenvector centrality value for all nodes in an iteration is less than epsilon).
- MaxIter: int (input)
Maximum number of iterations (stop when exceeding this number of iterations).
Return value:
None
The following example shows how to calculate eigenvector centrality values for nodes in TUNGraph
:
import snap
UGraph = snap.GenRndGnm(snap.PUNGraph, 100, 1000)
NIdEigenH = snap.TIntFltH()
snap.GetEigenVectorCentr(UGraph, NIdEigenH)
for item in NIdEigenH:
print("%node: d centrality: %f" % (item, NIdEigenH[item]))