closeness_centrality#

closeness_centrality(G, u=None, distance=None, wf_improved=True)[source]#

Compute closeness centrality for nodes.

Closeness centrality [1] of a node u is the reciprocal of the average shortest path distance to u over all n-1 reachable nodes.

\[C(u) = \frac{n - 1}{\sum_{v=1}^{n-1} d(v, u)},\]

where d(v, u) is the shortest-path distance between v and u, and n-1 is the number of nodes reachable from u. Notice that the closeness distance function computes the incoming distance to u for directed graphs. To use outward distance, act on G.reverse().

Notice that higher values of closeness indicate higher centrality.

Wasserman and Faust propose an improved formula for graphs with more than one connected component. The result is ā€œa ratio of the fraction of actors in the group who are reachable, to the average distanceā€ from the reachable actors [2]. You might think this scale factor is inverted but it is not. As is, nodes from small components receive a smaller closeness value. Letting N denote the number of nodes in the graph,

\[C_{WF}(u) = \frac{n-1}{N-1} \frac{n - 1}{\sum_{v=1}^{n-1} d(v, u)},\]
Parameters:
Ggraph

A NetworkX graph

unode, optional

Return only the value for node u

distanceedge attribute key, optional (default=None)

Use the specified edge attribute as the edge distance in shortest path calculations. If None (the default) all edges have a distance of 1. Absent edge attributes are assigned a distance of 1. Note that no check is performed to ensure that edges have the provided attribute.

wf_improvedbool, optional (default=True)

If True, scale by the fraction of nodes reachable. This gives the Wasserman and Faust improved formula. For single component graphs it is the same as the original formula.

Returns:
nodesdictionary

Dictionary of nodes with closeness centrality as the value.

Notes

The closeness centrality is normalized to (n-1)/(|G|-1) where n is the number of nodes in the connected part of graph containing the node. If the graph is not completely connected, this algorithm computes the closeness centrality for each connected part separately scaled by that parts size.

If the ā€˜distanceā€™ keyword is set to an edge attribute key then the shortest-path length will be computed using Dijkstraā€™s algorithm with that edge attribute as the edge weight.

The closeness centrality uses inward distance to a node, not outward. If you want to use outword distances apply the function to G.reverse()

In NetworkX 2.2 and earlier a bug caused Dijkstraā€™s algorithm to use the outward distance rather than the inward distance. If you use a ā€˜distanceā€™ keyword and a DiGraph, your results will change between v2.2 and v2.3.

References

[1]

Linton C. Freeman: Centrality in networks: I. Conceptual clarification. Social Networks 1:215-239, 1979. https://doi.org/10.1016/0378-8733(78)90021-7

[2]

pg. 201 of Wasserman, S. and Faust, K., Social Network Analysis: Methods and Applications, 1994, Cambridge University Press.

Examples

>>> G = nx.Graph([(0, 1), (0, 2), (0, 3), (1, 2), (1, 3)])
>>> nx.closeness_centrality(G)
{0: 1.0, 1: 1.0, 2: 0.75, 3: 0.75}