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首页> 外文期刊>The Journal of Artificial Intelligence Research >Learning Discrete Bayesian Networks from Continuous Data
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Learning Discrete Bayesian Networks from Continuous Data

机译:从连续数据中学习离散贝叶斯网络

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摘要

Learning Bayesian networks from raw data can help provide insights into the relationships between variables. While real data often contains a mixture of discrete and continuous-valued variables, many Bayesian network structure learning algorithms assume all random variables are discrete. Thus, continuous variables are often discretized when learning a Bayesian network. However, the choice of discretization policy has significant impact on the accuracy, speed, and interpretability of the resulting models. This paper introduces a principled Bayesian discretization method for continuous variables in Bayesian networks with quadratic complexity instead of the cubic complexity of other standard techniques. Empirical demonstrations show that the proposed method is superior to the established minimum description length algorithm. In addition, this paper shows how to incorporate existing methods into the structure learning process to discretize all continuous variables and simultaneously learn Bayesian network structures.
机译:从原始数据学习贝叶斯网络可以帮助您深入了解变量之间的关系。尽管实际数据通常包含离散值和连续值变量的混合物,但是许多贝叶斯网络结构学习算法都假定所有随机变量都是离散的。因此,当学习贝叶斯网络时,连续变量通常是离散的。但是,离散化策略的选择对所得模型的准确性,速度和可解释性具有重大影响。本文介绍了一种原则上的贝叶斯离散化方法,用于贝叶斯网络中具有二次复杂度的连续变量,而不是其他标准技术的三次复杂度。实验表明,该方法优于已有的最小描述长度算法。另外,本文展示了如何将现有方法结合到结构学习过程中以离散化所有连续变量并同时学习贝叶斯网络结构。

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