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Distribution-Free Learning of Bayesian Network Structure

机译:贝叶斯网络结构的无分布学习

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We present an independence-based method for learning Bayesian network (BN) structure without making any assumptions on the probability distribution of the domain. This is mainly useful for continuous domains. Even mixed continuous-categorical domains and structures containing vectorial variables can be handled. We address the problem by developing a non-parametric conditional independence test based on the so-called kernel dependence measure, which can be readily used by any existing independence-based BN structure learning algorithm. We demonstrate the structure learning of graphical models in continuous and mixed domains from real-world data without distributional assumptions. We also experimentally show that our test is a good alternative, in particular in case of small sample sizes, compared to existing tests, which can only be used in purely categorical or continuous domains.
机译:我们提出了一种基于贝叶斯网络(BN)结构的基于独立性的方法,无需对该域的概率分布进行任何假设。这主要用于连续域。甚至可以处理包含矢量变量的混合连续类别域和结构。我们通过开发基于所谓的内核依赖度量的非参数条件独立性测试来解决该问题,该方法可以被任何现有的基于独立性的BN结构学习算法轻松使用。我们演示了在没有分布假设的情况下从真实世界数据中连续和混合域中图形模型的结构学习。我们还通过实验表明,与仅可用于纯分类或连续域的现有测试相比,尤其是在样本量较小的情况下,我们的测试是一种很好的选择。

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