PSL: An Algorithm for Partial Bayesian Network Structure Learning

Zhaolong Ling, Kui Yu, Lin Liu, Jiuyong Li, Yiwen Zhang, Xindong Wu
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Abstract

Learning partial Bayesian network (BN) structure is an interesting and challenging problem. In this challenge, it is computationally expensive to use global BN structure learning algorithms, while only one part of a BN structure is interesting, local BN structure learning algorithms are not a favourable solution either due to the issue of false edge orientation. To address the problem, this article first presents a detailed analysis of the false edge orientation issue with local BN structure learning algorithms and then proposes PSL, an efficient and accurate Partial BN Structure Learning (PSL) algorithm. Specifically, PSL divides V-structures in a Markov blanket (MB) into two types: Type-C V-structures and Type-NC V-structures, then it starts from the given node of interest and recursively finds both types of V-structures in the MB of the current node until all edges in the partial BN structure are oriented. To further improve the efficiency of PSL, the PSL-FS algorithm is designed by incorporating Feature Selection (FS) into PSL. Extensive experiments with six benchmark BNs validate the efficiency and accuracy of the proposed algorithms.
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部分贝叶斯网络结构学习的一种算法
学习部分贝叶斯网络(BN)结构是一个有趣而富有挑战性的问题。在这个挑战中,使用全局BN结构学习算法的计算成本很高,而BN结构只有一部分是有趣的,局部BN结构学习算法也不是一个有利的解决方案,因为存在假边方向问题。为了解决这个问题,本文首先详细分析了局部BN结构学习算法的假边方向问题,然后提出了一种高效、准确的部分BN结构学习(PSL)算法。具体来说,PSL将马尔可夫毯(MB)中的v -结构分为Type-C v -结构和Type-NC v -结构两种类型,然后从给定的感兴趣节点开始,递归地在当前节点的MB中找到这两种类型的v -结构,直到部分BN结构中的所有边都有取向。为了进一步提高PSL的效率,将特征选择(Feature Selection, FS)引入PSL,设计了PSL-FS算法。用6个基准神经网络进行了大量实验,验证了所提算法的效率和准确性。
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