FROSTY: A High-Dimensional Scale-Free Bayesian Network Learning Method

Joshua Bang, Sang-Yun Oh
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引用次数: 2

Abstract

We propose a scalable Bayesian network learning algorithm based on sparse Cholesky decomposition. Our approach only requires observational data and user-specified confidence level as inputs and can estimate networks with thousands of variables. The computational complexity of the proposed method is $O({p^{3}})$ for a graph with p vertices. Extensive numerical experiments illustrate the usefulness of our method with promising results. In simulation, the initial step in our approach also improves an alternative Bayesian network structure estimation method that uses an undirected graph as an input.
FROSTY:一种高维无标度贝叶斯网络学习方法
提出了一种基于稀疏Cholesky分解的可扩展贝叶斯网络学习算法。我们的方法只需要观测数据和用户指定的置信度作为输入,并且可以估计具有数千个变量的网络。对于有p个顶点的图,该方法的计算复杂度为$O({p^{3}})$。大量的数值实验证明了该方法的有效性,并取得了令人满意的结果。在模拟中,我们方法的初始步骤还改进了另一种贝叶斯网络结构估计方法,该方法使用无向图作为输入。
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