Hypergraph Markov Operators, Eigenvalues and Approximation Algorithms
Anand Louis

TL;DR
This paper introduces a new spectral theory for hypergraphs through a hypergraph Laplacian, establishing Cheeger-type inequalities, bounds on expansion and diameter, and algorithms for eigenvalue approximation, extending graph spectral results.
Contribution
It defines a novel hypergraph Laplacian operator, proves Cheeger-type inequalities for hypergraph expansion, and develops approximation algorithms for eigenvalues, generalizing spectral graph theory to hypergraphs.
Findings
Established Cheeger-type inequality for hypergraphs.
Bound hypergraph expansion using higher eigenvalues.
Provided polynomial-time algorithms for eigenvalue approximation.
Abstract
The celebrated Cheeger's Inequality \cite{am85,a86} establishes a bound on the expansion of a graph via its spectrum. This inequality is central to a rich spectral theory of graphs, based on studying the eigenvalues and eigenvectors of the adjacency matrix (and other related matrices) of graphs. It has remained open to define a suitable spectral model for hypergraphs whose spectra can be used to estimate various combinatorial properties of the hypergraph. In this paper we introduce a new hypergraph Laplacian operator (generalizing the Laplacian matrix of graphs)and study its spectra. We prove a Cheeger-type inequality for hypergraphs, relating the second smallest eigenvalue of this operator to the expansion of the hypergraph. We bound other hypergraph expansion parameters via higher eigenvalues of this operator. We give bounds on the diameter of the hypergraph as a function of the…
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Taxonomy
TopicsGraph theory and applications · Matrix Theory and Algorithms · Tensor decomposition and applications
