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Social network data consists of a collection of "nodes" (which can be any sort of entity - e.g. people, corporations) and "links" (which can be any sort of relationship - e.g. friend, sharing a board member).
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Graph Theory - Network Homophily with continuous node attribute
I agree with you @Balrog.
what about this little fun? I think it does what we need
import networkx as nx
import numpy as np
def att_assortativity(nx_graph,attribute):
'''
return corr. coe …