A Deterministic Algorithm for Balanced Cut with Applications to Dynamic Connectivity, Flows, and Beyond
Julia Chuzhoy, Yu Gao, Jason Li, Danupon Nanongkai, Richard Peng,, Thatchaphol Saranurak

TL;DR
This paper introduces the first deterministic, almost-linear time approximation algorithm for the Minimum Balanced Cut problem, with applications to dynamic connectivity, flows, and other graph problems, achieving near-optimal time complexities.
Contribution
It presents a novel deterministic algorithm for Balanced Cut with near-linear time complexity, improving previous randomized approaches and enabling deterministic solutions for various graph problems.
Findings
Deterministic algorithms with near-linear time for Balanced Cut and related problems.
Resolution of a major open problem in dynamic graph algorithms.
Implications for deterministic Laplacian system solving and maximum flow approximation.
Abstract
We consider the classical Minimum Balanced Cut problem: given a graph , compute a partition of its vertices into two subsets of roughly equal volume, while minimizing the number of edges connecting the subsets. We present the first {\em deterministic, almost-linear time} approximation algorithm for this problem. Specifically, our algorithm, given an -vertex -edge graph and any parameter , computes a -approximation for Minimum Balanced Cut on , in time . In particular, we obtain a -approximation in time for any constant , and a -approximation in time , for any slowly growing function . We obtain deterministic algorithms with similar guarantees for the Sparsest Cut and the…
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