Random Satisfiabiliy

D. Achlioptas
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Abstract

In the last twenty years a significant amount of effort has been devoted to the study of randomly generated satisfiability instances. While a number of generative models have been proposed, uniformly random k-CNF formulas are by now the dominant and most studied model. One reason for this is that such formulas enjoy a number of intriguing mathematical properties, including the following: for each k≥3, there is a critical value, rk, of the clauses-to-variables ratio, r, such that for rrk it is unsatisfiable with probability that tends to 1 as n→∞. Algorithmically, even at densities much below rk, no polynomial-time algorithm is known that can find any solution even with constant probability, while for all densities greater than rk, the length of every resolution proof of unsatisfiability is exponential (and, thus, so is the running time of every DPLL-type algorithm). By now, the study of random k-CNF formulas has also attracted attention in areas such as mathematics and statistical physics and is at the center of an area of intense research activity. At the same time, random k-SAT instances are a popular benchmark for testing and tuning satisfiability algorithms. Indeed, some of the better practical ideas in use today come from insights gained by studying the performance of algorithms on them. We review old and recent mathematical results about random k-CNF formulas, demonstrating that the connection between computational complexity and phase transitions is both deep and highly nuanced.
随机Satisfiabiliy
在过去的二十年中,大量的精力都投入到随机生成的满意度实例的研究中。虽然已经提出了许多生成模型,但均匀随机k-CNF公式是目前研究最多的主导模型。其中一个原因是,这些公式具有许多有趣的数学性质,包括以下内容:对于每个k≥3,子句与变量之比r有一个临界值rk,使得对于rrk,当n→∞时趋于1的概率是不可满足的。从算法上讲,即使在密度远低于rk的情况下,也没有已知的多项式时间算法能够以恒定的概率找到任何解,而对于所有大于rk的密度,每个分辨率证明不满意的长度都是指数级的(因此,每个dpll类型算法的运行时间也是指数级的)。到目前为止,随机k-CNF公式的研究也引起了数学和统计物理等领域的关注,并且是一个激烈研究活动领域的中心。同时,随机k-SAT实例是测试和调优可满足性算法的流行基准。事实上,今天使用的一些更好的实用想法来自于通过研究算法在它们上的表现而获得的见解。我们回顾了关于随机k-CNF公式的旧的和最近的数学结果,证明了计算复杂性和相变之间的联系既深刻又非常微妙。
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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