Approximate counting, the Lovasz local lemma, and inference in graphical models

Ankur Moitra
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引用次数: 45

Abstract

In this paper we introduce a new approach for approximately counting in bounded degree systems with higher-order constraints. Our main result is an algorithm to approximately count the number of solutions to a CNF formula Ф when the width is logarithmic in the maximum degree. This closes an exponential gap between the known upper and lower bounds. Moreover our algorithm extends straightforwardly to approximate sampling, which shows that under Lovász Local Lemma-like conditions it is not only possible to find a satisfying assignment, it is also possible to generate one approximately uniformly at random from the set of all satisfying assignments. Our approach is a significant departure from earlier techniques in approximate counting, and is based on a framework to bootstrap an oracle for computing marginal probabilities on individual variables. Finally, we give an application of our results to show that it is algorithmically possible to sample from the posterior distribution in an interesting class of graphical models.
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图模型中的近似计数,Lovasz局部引理和推理
本文提出了一种新的具有高阶约束的有界度系统的近似计数方法。我们的主要成果是一种算法,当宽度在最大程度上是对数时,可以近似地计算CNF公式Ф的解的个数。这缩小了已知上界和下界之间的指数差距。此外,我们的算法直接扩展到近似抽样,这表明在Lovász类局部引理条件下,不仅可以找到一个满意的赋值,而且还可以从所有满足赋值的集合中近似均匀随机地生成一个。我们的方法与早期的近似计数技术有很大的不同,并且基于一个框架来引导一个oracle来计算单个变量的边际概率。最后,我们给出了我们的结果的一个应用,以表明在一类有趣的图形模型中,从后验分布中抽样是算法上可能的。
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