Rounding Large Independent Sets on Expanders
Mitali Bafna, Jun-Ting Hsieh, Pravesh K. Kothari

TL;DR
This paper presents a polynomial-time algorithm for finding large independent sets in one-sided spectral expanders, contrasting with NP-hardness results for similar problems in almost 4-colorable expanders, and introduces a new clustering property for analysis.
Contribution
The paper introduces a novel algorithm for large independent sets in one-sided expanders and a new clustering property, expanding spectral methods beyond traditional two-sided expansion.
Findings
Polynomial-time algorithm for large independent sets in one-sided expanders.
NP-hardness of finding large independent sets in almost 4-colorable expanders under the Unique Games Conjecture.
New clustering property of large independent sets in expanding graphs.
Abstract
We develop a new approach for approximating large independent sets when the input graph is a one-sided spectral expander - that is, the uniform random walk matrix of the graph has its second eigenvalue bounded away from 1. Consequently, we obtain a polynomial time algorithm to find linear-sized independent sets in one-sided expanders that are almost -colorable or are promised to contain an independent set of size . Our second result above can be refined to require only a weaker vertex expansion property with an efficient certificate. In a surprising contrast to our algorithmic result, we observe that the analogous task of finding a linear-sized independent set in almost -colorable one-sided expanders (even when the second eigenvalue is ) is NP-hard, assuming the Unique Games Conjecture. All prior algorithms that beat the worst-case guarantees for this…
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Taxonomy
TopicsAlgorithms and Data Compression
