1 research outputs found
Size-Aware Hypergraph Motifs
Complex systems frequently exhibit multi-way, rather than pairwise,
interactions. These group interactions cannot be faithfully modeled as
collections of pairwise interactions using graphs, and instead require
hypergraphs. However, methods that analyze hypergraphs directly, rather than
via lossy graph reductions, remain limited. Hypergraph motif mining holds
promise in this regard, as motif patterns serve as building blocks for larger
group interactions which are inexpressible by graphs. Recent work has focused
on categorizing and counting hypergraph motifs based on the existence of nodes
in hyperedge intersection regions. Here, we argue that the relative sizes of
hyperedge intersections within motifs contain varied and valuable information.
We propose a suite of efficient algorithms for finding triplets of hyperedges
based on optimizing the sizes of these intersection patterns. This formulation
uncovers interesting local patterns of interaction, finding hyperedge triplets
that either (1) are the least correlated with each other, (2) have the highest
pairwise but not groupwise correlation, or (3) are the most correlated with
each other. We formalize this as a combinatorial optimization problem and
design efficient algorithms based on filtering hyperedges. Our experimental
evaluation shows that the resulting hyperedge triplets yield insightful
information on real-world hypergraphs. Our approach is also orders of magnitude
faster than a naive baseline implementation