Solving the max-cut problem using semidefinite optimization

Derkaoui Orkia, A. Lehireche
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Abstract

Max-cut problem is one of many NP-hard graph theory problems which attracted many researchers over the years. Maximum cuts are useful items including theoretical physics and electronics. But they are best known for algorithmic problem of finding a maximum cutting, commonly called MAXCUT, a relatively well-studied problem, particularly in the context of the approximation. Various heuristics, or combination of optimization and heuristic methods have been developed to solve this problem. Among them is the efficient algorithm of Goemans and Williamson. Their algorithm combines Semidefinite programming and a rounding procedure to produce an approximate solution to the max-cut problem. Semidefinite Programming (SDP) is currently the most sophisticated area of Conic Programming that is polynomially solvable. The SDP problem is solved with interior point methods. In parallel, the development of efficient SDP solvers, based on interior point algorithms, also contributed to the success of this method. In this paper we use a new variant of the solver CSDP (C library for semidfinite programming) to resolve this problem. It is based on a Majorize-Minimize line search algorithm for barrier function optimization. A tangent majorant function is built to approximate a scalar criterion containing a barrier function. The comparison of the results obtained with the classic CSDP and our new variant is promising.
用半定优化方法求解最大切割问题
极大切问题是近年来备受关注的NP-hard图论问题之一。最大切割是有用的项目,包括理论物理和电子。但它们最著名的是寻找最大切割的算法问题,通常称为MAXCUT,这是一个相对较好的研究问题,特别是在近似的背景下。各种启发式方法,或优化和启发式方法的结合已经发展来解决这个问题。其中有Goemans和Williamson的高效算法。他们的算法结合了半定规划和舍入过程来产生最大切问题的近似解。半定规划(SDP)是目前多项式可解的二次规划中最复杂的领域。用内点法求解SDP问题。同时,基于内点算法的高效SDP求解器的开发也为该方法的成功做出了贡献。本文采用求解器CSDP(半定编程C库)的一个新变体来解决这一问题。它是基于最大化-最小化线搜索算法的障碍函数优化。建立了一个正切主函数来近似包含势垒函数的标量准则。与经典的CSDP和我们的新变体的结果比较是有希望的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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