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Learning dynamic Bayesian network models via cross-validation

机译:通过交叉验证学习动态贝叶斯网络模型

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摘要

We study cross-validation as a scoring criterion for learning dynamic Bayesian network models that generalize well. We argue that cross-validation is more suitable than the Bayesian scoring criterion for one of the most common interpretations of generalization. We confirm this by carrying out an experimental comparison of cross-validation and the Bayesian scoring criterion, as implemented by the Bayesian Dirichlet metric and the Bayesian information criterion. The results show that cross-validation leads to models that generalize better for a wide range of sample sizes.
机译:我们研究交叉验证作为学习动态贝叶斯网络模型的评分标准。我们认为,对于泛化的最常见解释之一,交叉验证比贝叶斯评分标准更合适。我们通过对交叉验证和贝叶斯评分标准(由贝叶斯Dirichlet度量和贝叶斯信息标准实施)进行实验性比较来确认这一点。结果表明,交叉验证产生的模型对于广泛的样本量具有更好的泛化能力。

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