Improving the Smoothed Complexity of FLIP for Max Cut Problems

Author:

Bibak Ali1,Carlson Charles2,Chandrasekaran Karthekeyan1

Affiliation:

1. University of Illinois, Urbana-Champaign

2. University of Colorado Boulder

Abstract

Finding locally optimal solutions for MAX-CUT and MAX- k -CUT are well-known PLS-complete problems. An instinctive approach to finding such a locally optimum solution is the FLIP method. Even though FLIP requires exponential time in worst-case instances, it tends to terminate quickly in practical instances. To explain this discrepancy, the run-time of FLIP has been studied in the smoothed complexity framework. Etscheid and Röglin (ACM Transactions on Algorithms, 2017) showed that the smoothed complexity of FLIP for max-cut in arbitrary graphs is quasi-polynomial. Angel, Bubeck, Peres, and Wei (STOC, 2017) showed that the smoothed complexity of FLIP for max-cut in complete graphs is ( O Φ 5 n 15.1 ), where Φ is an upper bound on the random edge-weight density and Φ is the number of vertices in the input graph. While Angel, Bubeck, Peres, and Wei’s result showed the first polynomial smoothed complexity, they also conjectured that their run-time bound is far from optimal. In this work, we make substantial progress toward improving the run-time bound. We prove that the smoothed complexity of FLIP for max-cut in complete graphs is On 7.83 ). Our results are based on a carefully chosen matrix whose rank captures the run-time of the method along with improved rank bounds for this matrix and an improved union bound based on this matrix. In addition, our techniques provide a general framework for analyzing FLIP in the smoothed framework. We illustrate this general framework by showing that the smoothed complexity of FLIP for MAX-3-CUT in complete graphs is polynomial and for MAX - k - CUT in arbitrary graphs is quasi-polynomial. We believe that our techniques should also be of interest toward showing smoothed polynomial complexity of FLIP for MAX - k - CUT in complete graphs for larger constants k .

Funder

NSF

Publisher

Association for Computing Machinery (ACM)

Subject

Mathematics (miscellaneous)

Reference13 articles.

1. O. Angel and V. Tassion. 2018. Exponentially long improving sequences for MAX-CUT. Personal Communication. O. Angel and V. Tassion. 2018. Exponentially long improving sequences for MAX-CUT. Personal Communication.

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Finding local Max-Cut in graphs in randomized polynomial time;Soft Computing;2023-10-10

2. The Smoothed Complexity of Policy Iteration for Markov Decision Processes;Proceedings of the 55th Annual ACM Symposium on Theory of Computing;2023-06-02

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