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d-Separation: Strong Completeness of Semantics in Bayesian Network Inference

机译:D-分离:贝叶斯网络推理中语义的强大完整性

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It is known that d-separation can determine the minimum amount of information needed to process a query during exact inference in discrete Bayesian networks. Unfortunately, no practical method is known for determining the semantics of the intermediate factors constructed during inference. Instead, all inference algorithms are relegated to denoting the inference process in terms of potentials. In this theoretical paper, we give an algorithm, called Semantics in Inference (SI), that uses d-separation to denote the semantics of every potential constructed during inference. We show that SI possesses four salient features: polynomial time complexity, soundness, completeness, and strong completeness. SI provides a better understanding of the theoretical foundation of Bayesian networks and can be used for improved clarity, as shown via an examination of Bayesian network literature.
机译:已知D分离可以确定在离散贝叶斯网络中的精确推断过程中处理查询所需的最小信息。遗憾的是,没有发现实际方法用于确定在推理期间构建的中间因子的语义。相反,所有推理算法被降级以在潜在的方面表示推动过程。在本文中,我们提供了一种算法,称为推理语义(SI),它使用D分离来表示在推理期间构建的每个电位的语义。我们展示SI拥有四个突出特征:多项式时间复杂性,合理,完整性和强大的完整性。 SI更好地了解贝叶斯网络的理论基础,可用于改进的清晰度,如贝叶斯网络文献的检查所示。

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