On seeded subgraph-to-subgraph matching: The ssSGM Algorithm and matchability information theory

Abstract

The subgraph-subgraph matching problem is, given a pair of graphs and a positive integer K, to find K vertices in the first graph, K vertices in the second graph, and a bijection between them, so as to minimize the number of adjacency disagreements across the bijection; it is ``seeded" if some of this bijection is fixed. The problem is intractable, and we present the ssSGM algorithm, which uses Frank-Wolfe methodology to efficiently find an approximate solution. Then, in the context of a generalized correlated random Bernoulli graph model, in which the pair of graphs naturally have a core of K matched pairs of vertices, we provide and prove mild conditions for the subgraph-subgraph matching problem solution to almost always be the correct K matched pairs of vertices.

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