Hypergraphs as Weighted Directed Self-Looped Graphs: Spectral Properties, Clustering, Cheeger Inequality
Zihao Li, Dongqi Fu, Hengyu Liu, Jingrui He

TL;DR
This paper introduces a spectral clustering framework for hypergraphs modeled as weighted directed graphs with self-loops, establishing theoretical properties, algorithms, and empirical validation for hypergraph partitioning.
Contribution
It develops a unified spectral theory for EDVW hypergraphs, including definitions, Cheeger inequality, and a new clustering algorithm, HyperClus-G.
Findings
HyperClus-G finds near-optimal partitions in hypergraphs.
The normalized hypergraph Laplacian relates to NCut, guiding clustering.
Extensive experiments validate the theoretical results.
Abstract
Hypergraphs naturally arise when studying group relations and have been widely used in the field of machine learning. To the best of our knowledge, the recently proposed edge-dependent vertex weights (EDVW) modeling is one of the most generalized modeling methods of hypergraphs, i.e., most existing hypergraph conceptual modeling methods can be generalized as EDVW hypergraphs without information loss. However, the relevant algorithmic developments on EDVW hypergraphs remain nascent: compared to the spectral theories for graphs, its formulations are incomplete, the spectral clustering algorithms are not well-developed, and the hypergraph Cheeger Inequality is not well-defined. To this end, deriving a unified random walk-based formulation, we propose our definitions of hypergraph Rayleigh Quotient, NCut, boundary/cut, volume, and conductance, which are consistent with the corresponding…
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Taxonomy
TopicsGraph theory and applications · Advanced Graph Theory Research · Complex Network Analysis Techniques
MethodsSpectral Clustering
