ICML2024

Dynamic Correlation Clustering in Sublinear Update Time

Vincent Cohen-Addad, Silvio Lattanzi, Andreas Maggiori, Nikos Parotsidis

被引用 7 次

摘要

We study the classic problem of correlation clustering in dynamic node streams. In this setting, nodes are either added or randomly deleted over time, and each node pair is connected by a positive or negative edge. The objective is to continuously find a partition which minimizes the sum of positive edges crossing clusters and negative edges within clusters. We present an algorithm that maintains an O(1)O(1)-approximation with OO(polylog nn) amortized update time. Prior to our work, Behnezhad, Charikar, Ma, and L. Tan achieved a 55-approximation with O(1)O(1) expected update time in edge streams which translates in node streams to an O(D)O(D)-update time where DD is the maximum possible degree. Finally we complement our theoretical analysis with experiments on real world data.