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On the combination of logical and probabilistic models for?information analysis

机译:逻辑和概率模型相结合进行信息分析

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摘要

Formal logical tools are able to provide some amount of reasoning support for information analysis, but are unable to represent uncertainty. Bayesian network tools represent probabilistic and causal information, but in the worst case scale as poorly as some formal logical systems and require specialized expertise to use effectively. We describe a framework for systems that incorporate the advantages of both Bayesian and logical systems. We define a formalism for the conversion of automatically generated natural deduction proof trees into Bayesian networks. We then demonstrate that the merging of such networks with domain-specific causal models forms a consistent Bayesian network with correct values for the formulas derived in the proof. In particular, we show that hard evidential updates in which the premises of a proof are found to be true force the conclusions of the proof to be true with probability one, regardless of any dependencies and prior probability values assumed for the causal model. We provide several examples that demonstrate the generality of the natural deduction system by using inference schemes not supportable directly in Horn clause logic. We compare our approach to other ones, including some that use non-standard logics.
机译:形式逻辑工具能够为信息分析提供一定程度的推理支持,但不能表示不确定性。贝叶斯网络工具表示概率和因果信息,但在最坏的情况下,其规模不如某些正式逻辑系统那样差,并且需要专业知识才能有效地使用。我们描述了一个结合了贝叶斯和逻辑系统优点的系统框架。我们定义了将自动生成的自然演绎证明树转换为贝叶斯网络的形式主义。然后,我们证明,此类网络与特定于域的因果模型的合并形成了一个一致的贝叶斯网络,并为证明中得出的公式提供了正确的值。尤其是,我们表明,很难找到证据的前提是真实的证据更新,这迫使证据的结论以概率1成立,而与因果模型所假设的任何依存关系和先验概率值无关。我们提供了几个示例,这些示例通过使用在Horn子句逻辑中不直接支持的推理方案来证明自然演绎系统的一般性。我们将我们的方法与其他方法进行比较,包括使用非标准逻辑的方法。

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