一阶逻辑中的计数和抽样模型

Ondřej Kuželka
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摘要

一阶模型计数(FOMC)是对给定域元素集合上的一阶逻辑句子进行模型计数的任务。它的加权变体WFOMC通过为模型分配权重来推广FOMC,并且在统计关系学习中有许多应用。经过十多年的研究,许多作者已经发现了一些非平凡类的WFOMC问题,这些问题可以用域元素数量的时间多项式来解决。本文介绍了WFOMC和加权一阶模型抽样(WFOMS)相关问题的最新研究成果。我们还讨论了WFOMC和WFOMS在统计关系学习及其他领域的可能应用,例如,从枚举组合学和初等概率论中自动解决问题。最后,我们提到了仍然需要解决的研究问题,以便使这些方法的应用真正具有更广泛的实用性。
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Counting and Sampling Models in First-Order Logic
First-order model counting (FOMC) is the task of counting models of a first-order logic sentence over a given set of domain elements. Its weighted variant, WFOMC, generalizes FOMC by assigning weights to the models and has many applications in statistical relational learning. More than ten years of research by various authors has led to identification of non-trivial classes of WFOMC problems that can be solved in time polynomial in the number of domain elements. In this paper, we describe recent works on WFOMC and the related problem of weighted first-order model sampling (WFOMS). We also discuss possible applications of WFOMC and WFOMS within statistical relational learning and beyond, e.g., automated solving of problems from enumerative combinatorics and elementary probability theory. Finally, we mention research problems that still need to be tackled in order to make applications of these methods really practical more broadly.
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