Uniform sampling through the Lovasz local lemma

Heng Guo, M. Jerrum, Jingcheng Liu
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引用次数: 76

Abstract

We propose a new algorithmic framework, called “partial rejection sampling”, to draw samples exactly from a product distribution, conditioned on none of a number of bad events occurring. Our framework builds (perhaps surprising) new connections between the variable framework of the Lovász Local Lemma and some clas- sical sampling algorithms such as the “cycle-popping” algorithm for rooted spanning trees by Wilson. Among other applications, we discover new algorithms to sample satisfying assignments of k-CNF formulas with bounded variable occurrences.
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通过Lovasz局部引理的均匀抽样
我们提出了一种新的算法框架,称为“部分拒绝抽样”,以不发生任何不良事件为条件,从产品分布中准确抽取样本。我们的框架在Lovász局部引理的变量框架和一些经典的采样算法之间建立了(可能令人惊讶的)新的联系,例如Wilson针对有根生成树的“跳出循环”算法。在其他应用中,我们发现了新的算法来采样具有有界变量出现的k-CNF公式的满意赋值。
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