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Reasoning with BKBs—algorithms and complexity

机译:BKB推理—算法和复杂性

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摘要

Bayesian Knowledge Bases (BKB) are a rule-based probabilistic model that extends the well-known Bayes Networks (BN), by naturally allowing for context-specific independence and for cycles in the directed graph. We present a semantics for BKBs that facilitate handling of marginal probabilities, as well as finding most probable explanations. Complexity of reasoning with BKBs is NP hard, as for Bayes networks, but in addition, deciding consistency is also NP-hard. In special cases that problem does not occur. Computation of marginal probabilities in BKBs is another hard problem, hence approximation algorithms are necessary—stochastic sampling being a commonly used scheme. Good performance requires importance sampling, a method that works for BKBs with cycles is developed.
机译:贝叶斯知识库(BKB)是基于规则的概率模型,通过自然地允许特定于上下文的独立性和有向图中的循环,从而扩展了著名的贝叶斯网络(BN)。我们为BKB提供了一种语义,它有助于边际概率的处理以及找到最可能的解释。对于贝叶斯网络,使用BKB进行推理的复杂性是NP困难的,但是,此外,确定一致性也是NP困难的。在特殊情况下,不会发生此问题。 BKB中边际概率的计算是另一个难题,因此近似算法是必要的-随机采样是一种常用的方案。良好的性能需要重要性采样,因此开发了一种适用于带有循环的BKB的方法。

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