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Bayesian Network structure learning: Hybridizing complete search with independence tests

机译:贝叶斯网络结构学习:将完整搜索与独立性测试混合在一起

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摘要

Bayesian Networks (BN) are probabilistic graphical models used to encode in a compact way a joint probability distribution over a set of random variables. The NP-complete problem of finding the most probable BN structure given the observed data has been largely studied in recent years. In the literature, several complete algorithms have been proposed for the problem; in parallel, several tests for statistical independence between the random variables have been proposed, in order to reduce the size of the search space. In this work, we study how to hybridize the algorithm representing the state-of-the-art in complete search with two types of independence tests, and assess the performance of the two hybrid algorithms in terms of both solution quality and computational time. Experimental results show that hybridization with both types of independence test results in a substantial gain in computational time, against a limited loss in solution quality, and allow us to provide some guidelines on the choice of the test type, given the number of nodes in the network and the sample size.
机译:贝叶斯网络(BN)是概率图形模型,用于以紧凑的方式编码一组随机变量上的联合概率分布。近年来,已经大量研究了根据观察到的数据寻找最可能的BN结构的NP完全问题。在文献中,针对该问题提出了几种完整的算法。并行地,为了减小搜索空间的大小,已经提出了几种随机变量之间统计独立性的测试。在这项工作中,我们研究如何将代表最新技术的算法与两种类型的独立性测试进行完全搜索,并从解决方案质量和计算时间两方面评估这两种混合算法的性能。实验结果表明,与两种类型的独立性测试进行杂交,可以显着增加计算时间,而解决方案质量却受到有限的损失,并且在给定节点数量的情况下,我们可以为测试类型的选择提供一些指导。网络和样本量。

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