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Circumspect descent prevails in solving random constraint satisfaction problems

机译:解决随机约束满足问题时普遍采用后裔

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摘要

We study the performance of stochastic local search algorithms for random instances of the K-satisfiability (K-SAT) problem. We present a stochastic local search algorithm, ChainSAT, which moves in the energy landscape of a problem instance by never going upwards in energy. ChainSAT is a focused algorithm in the sense that it focuses on variables occurring in unsatisfied clauses. We show by extensive numerical investigations that ChainSAT and other focused algorithms solve large K-SAT instances almost surely in linear time, up to high clause-to-variable ratios α; for example, for K = 4 we observe linear-time performance well beyond the recently postulated clustering and condensation transitions in the solution space. The performance of ChainSAT is a surprise given that by design the algorithm gets trapped into the first local energy minimum it encounters, yet no such minima are encountered. We also study the geometry of the solution space as accessed by stochastic local search algorithms.
机译:我们研究随机局部搜索算法的K-可满足性(K-SAT)问题的随机实例的性能。我们提出了一种随机的局部搜索算法ChainSAT,该算法通过从不增加能量的方式在问题实例的能量环境中移动。从某种意义上讲,ChainSAT是一种聚焦算法,它着眼于未满足条款中出现的变量。我们通过大量的数值研究表明,ChainSAT和其他聚焦算法几乎可以在线性时间内确定地解决大型K-SAT实例,直到高子句与变量之比α为止。例如,对于K = 4,我们观察到线性时间性能远远超出了最近在求解空间中假定的聚类和凝聚态转换。鉴于设计使算法陷入了遇到的第一个局部能量最小值,但没有遇到这样的最小值,ChainSAT的性能令人惊讶。我们还研究了随机局部搜索算法访问的解空间的几何形状。

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