BBK: a simpler, faster algorithm for enumerating maximal bicliques in large sparse bipartite graphs
arxiv(2024)
摘要
Bipartite graphs are a prevalent modeling tool for real-world networks,
capturing interactions between vertices of two different types. Within this
framework, bicliques emerge as crucial structures when studying dense
subgraphs: they are sets of vertices such that all vertices of the first type
interact with all vertices of the second type. Therefore, they allow
identifying groups of closely related vertices of the network, such as
individuals with similar interests or webpages with similar contents. This
article introduces a new algorithm designed for the exhaustive enumeration of
maximal bicliques within a bipartite graph. This algorithm, called BBK for
Bipartite Bron-Kerbosch, is a new extension to the bipartite case of the
Bron-Kerbosch algorithm, which enumerates the maximal cliques in standard
(non-bipartite) graphs. It is faster than the state-of-the-art algorithms and
allows the enumeration on massive bipartite graphs that are not manageable with
existing implementations. We analyze it theoretically to establish two
complexity formulas: one as a function of the input and one as a function of
the output characteristics of the algorithm. We also provide an open-access
implementation of BBK in C++, which we use to experiment and validate its
efficiency on massive real-world datasets and show that its execution time is
shorter in practice than state-of-the art algorithms. These experiments also
show that the order in which the vertices are processed, as well as the choice
of one of the two types of vertices on which to initiate the enumeration have
an impact on the computation time.
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