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Reduction of Computational Complexity in Bayesian Networks through Removal of Weak Dependences

机译:通过消除弱依赖性减少贝叶斯网络中的计算复杂性

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The paper presents a method for reducing the computational complexity of Bayesian networks through identification and removal of weak dependences (removal of links from the (moralized) independence graph). The removal of a small number of links may reduce the computational complexity dramatically, since several fill-ins and moral links may be rendered superfluous by the removal. The method is described in terms of impact on the independence graph, the junction tree, and the potential functions associated with these. An empirical evaluation of the method using large real-world networks demonstrates the applicability of the method. Further, the method, which has been implemented in Hugin, complements the approximation method suggested by Jensen & Andersen (1990).
机译:本文提出了一种通过识别和消除弱依赖性(从(道德的)独立图上删除链接)来降低贝叶斯网络的计算复杂度的方法。删除少量链接可以显着降低计算复杂度,因为删除可能会使多个填充和道德链接变得多余。根据对独立性图,连接树以及与之相关联的潜在功能的影响来描述该方法。使用大型实际网络对该方法进行的经验评估证明了该方法的适用性。此外,已在Hugin中实现的方法补充了Jensen&Andersen(1990)提出的近似方法。

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