粘性布朗舍入及其在约束满足问题中的应用

IF 0.9 3区 计算机科学 Q3 COMPUTER SCIENCE, THEORY & METHODS
Sepehr Abbasi-Zadeh, Nikhil Bansal, Guru Guruganesh, Aleksandar Nikolov, Roy Schwartz, Mohit Singh
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引用次数: 0

摘要

半定规划是设计和分析组合优化问题近似算法的有力工具。特别是Goemans和Williamson[31]的随机超平面舍入方法已经被广泛研究了二十多年,产生了对原始技术的各种扩展和美观的算法,用于广泛的应用。尽管这种方法对某些问题(例如Max-Cut)产生了严格的近似保证,但对于许多其他问题(例如Max-SAT和Max-DiCut),严格的近似比仍然未知。造成这种情况的一个主要原因是,已知的舍入半确定松弛的技术很少。在本文中,我们提出了一种新的基于布朗运动的半确定规划舍入的一般简便方法。我们的方法受到算法差异理论的启发。我们开发并展示了分析我们新的舍入算法的工具,利用布朗运动理论、复杂分析和偏微分方程的数学机制。关注约束满足问题,我们将我们的方法应用于几个经典问题,包括Max-Cut, Max-2SAT和Max-DiCut,并推导出与最知名结果竞争的新算法。为了说明我们方法的通用性和一般适用性,我们给出了具有侧约束的最大割问题的新近似算法,该算法关键地利用了粘布朗运动的测量集中结果,粘布朗运动是超平面舍入及其推广中缺少的一个特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sticky Brownian Rounding and its Applications to Constraint Satisfaction Problems

Semidefinite programming is a powerful tool in the design and analysis of approximation algorithms for combinatorial optimization problems. In particular, the random hyperplane rounding method of Goemans and Williamson [31] has been extensively studied for more than two decades, resulting in various extensions to the original technique and beautiful algorithms for a wide range of applications. Despite the fact that this approach yields tight approximation guarantees for some problems, e.g., Max-Cut, for many others, e.g., Max-SAT and Max-DiCut, the tight approximation ratio is still unknown. One of the main reasons for this is the fact that very few techniques for rounding semi-definite relaxations are known.

In this work, we present a new general and simple method for rounding semi-definite programs, based on Brownian motion. Our approach is inspired by recent results in algorithmic discrepancy theory. We develop and present tools for analyzing our new rounding algorithms, utilizing mathematical machinery from the theory of Brownian motion, complex analysis, and partial differential equations. Focusing on constraint satisfaction problems, we apply our method to several classical problems, including Max-Cut, Max-2SAT, and Max-DiCut, and derive new algorithms that are competitive with the best known results. To illustrate the versatility and general applicability of our approach, we give new approximation algorithms for the Max-Cut problem with side constraints that crucially utilizes measure concentration results for the Sticky Brownian Motion, a feature missing from hyperplane rounding and its generalizations.

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来源期刊
ACM Transactions on Algorithms
ACM Transactions on Algorithms COMPUTER SCIENCE, THEORY & METHODS-MATHEMATICS, APPLIED
CiteScore
3.30
自引率
0.00%
发文量
50
审稿时长
6-12 weeks
期刊介绍: ACM Transactions on Algorithms welcomes submissions of original research of the highest quality dealing with algorithms that are inherently discrete and finite, and having mathematical content in a natural way, either in the objective or in the analysis. Most welcome are new algorithms and data structures, new and improved analyses, and complexity results. Specific areas of computation covered by the journal include combinatorial searches and objects; counting; discrete optimization and approximation; randomization and quantum computation; parallel and distributed computation; algorithms for graphs, geometry, arithmetic, number theory, strings; on-line analysis; cryptography; coding; data compression; learning algorithms; methods of algorithmic analysis; discrete algorithms for application areas such as biology, economics, game theory, communication, computer systems and architecture, hardware design, scientific computing
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