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resource_allocation_index(G, ebunch=None)

Resource allocation index of u and :None:None:`v` is defined as

$$\sum_{w \in \Gamma(u) \cap \Gamma(v)} \frac{1}{|\Gamma(w)|}$$

where $\Gamma(u)$ denotes the set of neighbors of $u$.

Parameters

G : graph

A NetworkX undirected graph.

ebunch : iterable of node pairs, optional (default = None)

Resource allocation index will be computed for each pair of nodes given in the iterable. The pairs must be given as 2-tuples (u, v) where u and v are nodes in the graph. If ebunch is None then all non-existent edges in the graph will be used. Default value: None.

Returns

piter : iterator

An iterator of 3-tuples in the form (u, v, p) where (u, v) is a pair of nodes and p is their resource allocation index.

Compute the resource allocation index of all node pairs in ebunch.

Examples

>>> G = nx.complete_graph(5)
... preds = nx.resource_allocation_index(G, [(0, 1), (2, 3)])
... for u, v, p in preds:
...  print(f"({u}, {v}) -> {p:.8f}") (0, 1) -> 0.75000000 (2, 3) -> 0.75000000
See :

Back References

The following pages refer to to this document either explicitly or contain code examples using this.

networkx.algorithms.link_prediction.resource_allocation_index

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GitHub : /networkx/algorithms/link_prediction.py#43
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