Result: Simultaneously Approximating All Norms for Massively Parallel Correlation Clustering

Title:
Simultaneously Approximating All Norms for Massively Parallel Correlation Clustering
Contributors:
Nairen Cao and Shi Li and Jia Ye
Publication Status:
Preprint
Publisher Information:
arXiv, 2024.
Publication Year:
2024
Document Type:
Academic journal Article<br />Conference object
File Description:
application/pdf
DOI:
10.48550/arxiv.2410.09321
DOI:
10.4230/lipics.icalp.2025.40
Rights:
CC BY
Accession Number:
edsair.doi.dedup.....a69a7514cd75162f58eca492c991a9cc
Database:
OpenAIRE

Further Information

We revisit the simultaneous approximation model for the correlation clustering problem introduced by Davies, Moseley, and Newman[DMN24]. The objective is to find a clustering that minimizes given norms of the disagreement vector over all vertices. We present an efficient algorithm that produces a clustering that is simultaneously a $63.3$-approximation for all monotone symmetric norms. This significantly improves upon the previous approximation ratio of $6348$ due to Davies, Moseley, and Newman[DMN24], which works only for $\ell_p$-norms. To achieve this result, we first reduce the problem to approximating all top-$k$ norms simultaneously, using the connection between monotone symmetric norms and top-$k$ norms established by Chakrabarty and Swamy [CS19]. Then we develop a novel procedure that constructs a $12.66$-approximate fractional clustering for all top-$k$ norms. Our $63.3$-approximation ratio is obtained by combining this with the $5$-approximate rounding algorithm by Kalhan, Makarychev, and Zhou[KMZ19]. We then demonstrate that with a loss of $ε$ in the approximation ratio, the algorithm can be adapted to run in nearly linear time and in the MPC (massively parallel computation) model with poly-logarithmic number of rounds. By allowing a further trade-off in the approximation ratio to $(359+ε)$, the number of MPC rounds can be reduced to a constant.