最坏情况分析,3-SAT决策和下界:改进SAT算法的方法

Oliver Kullman
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引用次数: 25

摘要

提出了最坏情况分析和(3-)SAT决策的新方法。重点在于导致3-SAT决策的改进界1:50 . 45 n的中心思想([Ku96];N是变量的个数)。对SAT决策的影响一般是通过一些假设来讨论和阐明的。此外,还给出了一类一般sat算法的指数下界,并指出了在该下界下存在的唯一可能性。本文提出了改进的3-SAT决策的最坏情况上界1:50 . 45 n ([Ku96])的中心思想。1)分九节讨论下列主题:“分支测量”:介绍了“-函数”和“距离函数”的概念,这是我们分析SAT算法的主要工具,也是我们提出的(完整的)实用算法的基础。2. “估计任意树的大小”:给出了“引理”,给出了任意树叶子数的上界,并讨论了“好”距离函数的中心准则。3.“改进的3-SAT算法的基本思想”:从最坏情况界1:619 n ((MoSp79], Lu84], MoSp85])和1:579 n ((Sch92])开始,我们解释了这一观察结果,这是我们研究的起源。4. \绿色距离函数n ?:讨论了(重新)分析的主要工具,改进的距离函数(n为变量的损失,而通过方法1计算2-子句数量的变化)。关于主题的历史,参见Ku96],也参见KuLu96];有关SAT算法的整个领域,请参阅GPFW96]。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Worst-case analysis, 3-SAT decision and lower bounds: Approaches for improved SAT algorithms
New methods for worst-case analysis and (3-)SAT decision are presented. The focus lies on the central ideas leading to the improved bound 1:5045 n for 3-SAT decision ((Ku96]; n is the number of variables). The implications for SAT decision in general are discussed and elucidated by a number of hypothesis'. In addition an exponential lower bound for a general class of SAT-algorithms is given and the only possibilities to remain under this bound are pointed out. In this article the central ideas leading to the improved worst-case upper bound 1:5045 n for 3-SAT decision ((Ku96]) are presented. 1) In nine sections the following subjects are treated: 1. \Gauging of branchings": The \-function" and the concept of a \distance function" is introduced, our main tools for the analysis of SAT algorithms, and, as we propose, also a basis for (complete) practical algorithms. 2. \Estimating the size of arbitrary trees": The \-Lemma" is presented, yielding an upper bound for the number of leaves of arbitrary trees, and our central criterion for \good" distance functions is discussed. 3. \The basic idea for the improved 3-SAT algorithm": Starting from the worst-case bounds 1:619 n ((MoSp79], Lu84], MoSp85]) and 1:579 n ((Sch92]), we explain that observation which has been the origin of our investigations. 4. \The reened distance function n ? ": The main tool for the (reened) analysis, the improved distance function, is discussed ((n is the loss of variables, while counts the variation in the number of 2-clauses by means 1) For the history of the subject, see Ku96], and also KuLu96]; for the whole eld of SAT algorithms see GPFW96].
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