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Generating Bayesian Networks from Probability Logic Knowledge Bases

机译:从概率逻辑知识库生成贝叶斯网络

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We present a method for dynamically generating Bayesian networks from knowledge bases consisting of first-order probability logic sentences. We present a subset of probability logic sufficient for representing the class of Bayesian networks with discrete-valued nodes. We impose constraints on the form of the sentences that guarantee that the knowledge base contains all the probabilistic information necessary to generate a network. We define the concept of d-separation for knowledge bases and prove that a knowledge base with independence conditions defined by d-separation is a complete specification of a probability distribution. We present a network generation algorithm that, given an inference problem in the form of a query Q and a set of evidence E, generates a network to compute P(QE). We prove the algorithm to be correct.
机译:我们提出了一种从一阶概率逻辑语句组成的知识库中动态生成贝叶斯网络的方法。我们提出了概率逻辑的一个子集,该子集足以表示具有离散值节点的贝叶斯网络的类别。我们对句子的形式施加约束,以确保知识库包含生成网络所需的所有概率信息。我们定义知识库的d分离概念,并证明具有d分离定义的独立性条件的知识库是概率分布的完整规范。我们提出了一种网络生成算法,该算法以查询Q和证据集E的形式给出一个推理问题,生成一个网络来计算P(Q \ E)。我们证明该算法是正确的。

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