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Performance Evaluation of Algorithms for Soft Evidential Update in Bayesian Networks: First Results

机译:贝叶斯网络中软证据更新算法的性能评估:初步结果

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In this paper we analyze the performance of three algorithms for soft evidential update, in which a probability distribution represented by a Bayesian network is modified to a new distribution constrained by given marginals, and closest to the original distribution according to cross entropy. The first algorithm is a new and improved version of the big clique algorithm [1] that utilizes lazy propagation [2]. The second and third algorithm [3] are wrapper methods that convert soft evidence to virtual evidence, in which the evidence for a variable consists of a likelihood ratio. Virtual evidential update is supported in existing Bayesian inference engines, such as Hugin. To evaluate the three algorithms, we implemented BRUSE (Bayesian Reasoning Using Soft Evidence), a new Bayesian inference engine, and instrumented it. The resulting statistics are presented and discussed.
机译:在本文中,我们分析了三种用于软证据更新的算法的性能,其中将贝叶斯网络表示的概率分布修改为受给定边际约束的新分布,并且根据交叉熵最接近原始分布。第一种算法是使用延迟传播[2]的大集团算法[1]的新版本和改进版本。第二和第三种算法[3]是将软证据转换为虚拟证据的包装方法,其中变量的证据由似然比组成。现有贝叶斯推理引擎(例如Hugin)支持虚拟证据更新。为了评估这三种算法,我们实现了BRUSE(使用软证据的贝叶斯推理)(一种新的贝叶斯推理引擎)并对其进行了检测。呈现并讨论了所得的统计数据。

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