不完整的算法

Henry A. Kautz, Ashish Sabharwal, B. Selman
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引用次数: 43

摘要

对可满足性测试的不完全算法的研究导致了20世纪90年代早期第一批可扩展的SAT求解器的出现。不完全方法与基于穷举分支和回溯搜索的系统求解方法不同,它通常基于随机局部搜索。在各种领域的问题上,这种不完备的SAT方法明显优于基于dpl的方法。虽然早期的贪婪算法已经显示出了希望,特别是在随机实例上,但在搜索过程中引入随机化和所谓的上坡移动,大大扩展了SAT的不完整算法的范围。本章讨论了这些算法,以及一些有助于提高其性能的关键技术,例如关注当前未满足子句中出现的变量,设计了通过子句重加权和自适应噪声机制有效地将搜索从局部最小值中拉出来的方法。本章还简要讨论了一些基于离散拉格朗日方法的技术的形式基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incomplete Algorithms
Research on incomplete algorithms for satisfiability testing lead to some of the first scalable SAT solvers in the early 1990’s. Unlike systematic solvers often based on an exhaustive branching and backtracking search, incomplete methods are generally based on stochastic local search. On problems from a variety of domains, such incomplete methods for SAT can significantly outperform DPLL-based methods. While the early greedy algorithms already showed promise, especially on random instances, the introduction of randomization and so-called uphill moves during the search significantly extended the reach of incomplete algorithms for SAT. This chapter discusses such algorithms, along with a few key techniques that helped boost their performance such as focusing on variables appearing in currently unsatisfied clauses, devising methods to efficiently pull the search out of local minima through clause re-weighting, and adaptive noise mechanisms. The chapter also briefly discusses a formal foundation for some of the techniques based on the discrete Lagrangian method.
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