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An Extension of the Differential Approach for Bayesian Network Inference to Dynamic Bayesian Networks

机译:贝叶斯网络推断的差分方法向动态贝叶斯网络的扩展

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摘要

We extend the differential approach to inference in Bayesian networks (BNs) (Darwiche, 2000) to handle specific problems that arise in the context of dynamic Bayesian networks (DBNs). We first summarize Darwiche's approach for BNs, which involves the representation of a BN in terms of a mul-tivariate polynomial. We then show how procedures for the computation of corresponding polynomials for DBNs can be derived. These procedures permit not only an exact roll-up of old lime slices but also a constant-space evaluation of DBNs. The method is applicable to both forward and backward propagation, and it does not presuppose that each time slice of the DBN has the same structure. It is compatible with approximative methods for roll-up and evaluation of DBNs.
机译:我们将差分方法扩展到贝叶斯网络(BNs)中的推论(Darwiche,2000),以处理在动态贝叶斯网络(DBNs)上下文中出现的特定问题。我们首先总结达里奇(Darwiche)的BN方法,其中涉及用多变量多项式表示BN。然后,我们说明如何导出DBN的相应多项式的计算过程。这些程序不仅可以准确地将旧的石灰片卷起来,还可以对DBN进行恒定空间评估。该方法适用于正向和反向传播,并且不假定DBN的每个时间片都具有相同的结构。它与用于汇总和评估DBN的近似方法兼容。

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