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Reweighted Spectral Partitioning Works: Bounds for Special Graph Classes

Published: June 2, 2025 | arXiv ID: 2506.01228v3

By: Jack Spalding-Jamieson

Potential Business Impact:

Finds better ways to split computer networks.

Business Areas:
Coworking Real Estate

Spectral partitioning is a method that can be used to compute small sparse cuts or small edge-separators in a wide variety of graph classes, by computing the second-smallest eigenvalue (and eigenvector) of the Laplacian matrix. Upper bounds on this eigenvalue for certain graph classes imply that the method obtains small edge-separators for these classes, usually with a sub-optimal dependence on the maximum degree. In this work, we show that a related method, called reweighted spectral partitioning, guarantees near-optimal sparse vertex-cuts and vertex-separators in a wide variety of graph classes. In many cases, this involves little-to-no necessary dependence on maximum degree. We also obtain a new proof of the planar separator theorem, a strengthened eigenvalue bound for bounded-genus graphs, and a refined form of the recent Cheeger-style inequality for vertex expansion via a specialized dimension-reduction step.

Page Count
42 pages

Category
Computer Science:
Data Structures and Algorithms