可能性网络:MAP查询与计算分析

S. Benferhat, Amélie Levray, Karim Tabia
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引用次数: 1

摘要

可能性网络是基于可能性理论的强大的图形不确定性表示。分析了基于最小和基于产品的可能性网络查询的计算复杂度。它特别关注一种非常常见的查询:计算最大后验解释(MAP)。本文的主要结果是证明了在基于最小和基于产品的可能性网络中回答MAP查询的决策问题是np完全的。由于MAP查询在概率贝叶斯网络中是NP^PP -完全的,因此这种计算复杂度的结果代表了可能性网络相对于概率网络的优势。我们提供了基于将3SAT决策问题约简为MAP查询可能性网络决策问题的证明。以及对使用SAT求解器实现MAP查询有用的缩减。
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Possibilistic Networks: MAP Query and Computational Analysis
Possibilistic networks are powerful graphical uncertainty representations based on possibility theory. This paper analyzes the computational complexity of querying min-based and product-based possibilistic networks. It particularly focuses on a very common kind of queries: computing maximum a posteriori explanation (MAP). The main result of the paper is to show that the decision problem of answering MAP queries in both min-based and product-based possibilistic networks is NP-complete. Such computational complexity results represent an advantage of possibilistic networks over probabilistic networks since MAP querying is NP^PP -complete in probabilistic Bayesian networks. We provide the proof based on reduction from the 3SAT decision problem to MAP querying possibilistic networks decision problem. As well as reductions that are useful for implementation of MAP queries using SAT solvers.
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