Cheeger Inequalities for Directed Graphs and Hypergraphs Using Reweighted Eigenvalues
Lap Chi Lau, Kam Chuen Tung, Robert Wang

TL;DR
This paper develops new Cheeger inequalities for directed graphs and hypergraphs using reweighted eigenvalues, linking spectral properties to expansion and mixing times, and providing tools for graph partitioning.
Contribution
It introduces a unified spectral framework for directed graphs and hypergraphs using reweighted eigenvalues, improving existing Cheeger inequalities and connecting spectral theory with expansion properties.
Findings
Derived Cheeger inequalities relating eigenvalues to vertex and edge expansion.
Provided spectral algorithms for finding sparse cuts in directed graphs.
Extended the spectral theory to hypergraphs, improving previous bounds.
Abstract
We derive Cheeger inequalities for directed graphs and hypergraphs using the reweighted eigenvalue approach that was recently developed for vertex expansion in undirected graphs [OZ22,KLT22,JPV22]. The goal is to develop a new spectral theory for directed graphs and an alternative spectral theory for hypergraphs. The first main result is a Cheeger inequality relating the vertex expansion of a directed graph to the vertex-capacitated maximum reweighted second eigenvalue : \[ \vec{\lambda}_2^{v*} \lesssim \vec{\psi}(G) \lesssim \sqrt{\vec{\lambda}_2^{v*} \cdot \log (\Delta/\vec{\lambda}_2^{v*})}. \] This provides a combinatorial characterization of the fastest mixing time of a directed graph by vertex expansion, and builds a new connection between reweighted eigenvalued, vertex expansion, and fastest mixing time for directed graphs. The second…
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Taxonomy
TopicsGraph theory and applications · DNA and Nucleic Acid Chemistry · Nuclear Receptors and Signaling
