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Local-to-Global Bayesian Network Structure Learning

机译:局部到全球贝叶斯网络结构学习

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We introduce a new local-to-global structure learning algorithm, called graph growing structure learning (GGSL), to learn Bayesian network (BN) structures. GGSL starts at a (random) node and then gradually expands the learned structure through a series of local learning steps. At each local learning step, the proposed algorithm only needs to revisit a subset of the learned nodes, consisting of the local neighborhood of a target, and therefore improves on both memory and time efficiency compared to traditional global structure learning approaches. GGSL also improves on the existing local-to-global learning approaches by removing the need for conflict-resolving AND-rules, and achieves better learning accuracy. We provide theoretical analysis for the local learning step, and show that GGSL outperforms existing algorithms on benchmark datasets. Overall, GGSL demonstrates a novel direction to scale up BN structure learning while limiting accuracy loss.
机译:我们介绍了一种新的本地到全局结构学习算法,称为图形生长结构学习(GGSL),以学习贝叶斯网络(BN)结构。 GGSL以(随机)节点开始,然后通过一系列本地学习步骤逐步扩展学习结构。在每个本地学习步骤中,所提出的算法仅需要重新访问学习节点的子集,由目标的本地邻域组成,因此与传统的全球结构学习方法相比,改善了存储器和时间效率。 GGSL还通过去除解决冲突和规则的需要,提高了现有的本地到全球学习方法,并实现了更好的学习准确性。我们为本地学习步骤提供了理论分析,并表明GGSL优于基准数据集的现有算法。总体而言,GGSL演示了一种新颖的方向,以扩大BN结构学习,同时限制精度损耗。

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