Correlation Clustering with Sherali-Adams
Vincent Cohen-Addad, Euiwoong Lee, Alantha Newman

TL;DR
This paper improves the approximation ratio for Correlation Clustering to below 2 by utilizing Sherali-Adams hierarchy and correlated rounding, addressing a longstanding open problem.
Contribution
It introduces a $(1.994 + psilon)$-approximation algorithm for Correlation Clustering using Sherali-Adams hierarchy and a novel global analysis approach.
Findings
Achieved approximation ratio of 2+psilon
Developed a rounding technique based on Sherali-Adams hierarchy
Provided a global analysis scheme for clustering approximation
Abstract
Given a complete graph where each edge is labeled or , the Correlation Clustering problem asks to partition into clusters to minimize the number of edges between different clusters plus the number of edges within the same cluster. Correlation Clustering has been used to model a large number of clustering problems in practice, making it one of the most widely studied clustering formulations. The approximability of Correlation Clustering has been actively investigated [BBC04, CGW05, ACN08], culminating in a -approximation algorithm [CMSY15], based on rounding the standard LP relaxation. Since the integrality gap for this formulation is 2, it has remained a major open question to determine if the approximation factor of 2 can be reached, or even breached. In this paper, we answer this question affirmatively by showing that there exists a $(1.994 +…
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Taxonomy
TopicsComplex Network Analysis Techniques · Advanced Clustering Algorithms Research · Data Management and Algorithms
