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Efficient indexing methods for recursive decompositions of Bayesian networks

机译:贝叶斯网络递归分解的有效索引方法

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We consider efficient indexing methods for conditioning graphs, which are a form of recursive decomposition for Bayesian networks. We compare two well-known methods for indexing, a top-down method and a bottom-up method, and discuss the redundancy that each of these suffer from. We present a new method for indexing that combines the advantages of each model in order to reduce this redundancy. We also introduce the concept of an update manager, which is a node in the conditioning graph that controls when other nodes update their current index. Empirical evaluations over a suite of standard test networks show a considerable reduction both in the amount of indexing computation that takes place, and the overall runtime required by the query algorithm.
机译:我们考虑了条件图的有效索引方法,这是贝叶斯网络递归分解的一种形式。我们比较了两种众所周知的索引方法,即自上而下的方法和自下而上的方法,并讨论了每种方法所遭受的冗余。我们提出了一种新的索引方法,该方法结合了每个模型的优点,以减少这种冗余。我们还介绍了更新管理器的概念,它是条件图中的一个节点,用于控制其他节点何时更新其当前索引。对一组标准测试网络的经验评估表明,发生的索引计算量以及查询算法所需的总体运行时间都大大减少了。

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