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Exploiting Causal Independence Using Weighted Model Counting

机译:利用加权模型计数的因果独立性

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Previous studies have demonstrated that encoding a Bayesian network into a SAT-CNF formula and then performing weighted model counting using a backtracking search algorithm can be an effective method for exact inference in Bayesian networks. In this paper, we present techniques for improving this approach for Bayesian networks with noisy-OR and noisy-MAX relations - two relations which are widely used in practice as they can dramatically reduce the number of probabilities one needs to specify. In particular, we present two space efficient CNF encodings for noisy-OR/MAX and explore alternative search ordering heuristics. We experimentally evaluated our techniques on large-scale real and randomly generated Bayesian networks. On these benchmarks, our techniques gave speedups of up to two orders of magnitude over the best previous approaches and scaled up to networks with larger numbers of random variables.
机译:以前的研究已经证明,将贝叶斯网络编码到SAT-CNF公式中,然后使用回溯搜索算法执行加权模型计数可以是贝叶斯网络中精确推断的有效方法。在本文中,我们提供了利用嘈杂 - 或嘈杂的关系改善这种方法的技术 - 与嘈杂的 - 最大关系 - 两种关系,这些关系在实践中被广泛使用,因为它们可以大大减少需要指定的概率数量。特别是,我们为嘈杂或/最大的两个空间高效的CNF编码以及探索替代搜索订购启发式。我们通过实验评估了我们对大型真实和随机生成的贝叶斯网络的技术。在这些基准测试中,我们的技术在最佳先前的方法中提供了高达两个数量级的加速,并扩大到具有较大数量随机变量的网络。

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