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Learning Right Sized Belief Networks by Means of a Hybrid Methodology

机译:通过混合方法学习正确的信念网络

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摘要

Previous algorithms for the construction of belief networks structures from data are mainly based either on independence criteria or on scoring metrics. The aim of this paper is to present a hybrid methodology that is a combination of these two approaches, which benefits from characteristics of each one, and to introduce an operative algorithm based on this methodology. We dedicate a special attention to the problem of getting the 'right' size of the belief network induced from data, i.e. finding a trade-off between network complexity and accuracy. We propose several approaches to tackle this matter. Results of the evaluation of the algorithm on the well-known Alarm network are also presented.
机译:用于从数据构建信念网络结构的先前算法主要基于独立性标准或评分标准。本文的目的是提出一种混合方法,将这两种方法结合起来并受益于每种方法的特点,并介绍一种基于该方法的可操作算法。我们特别关注从数据获得的信念网络的``正确''大小的问题,即在网络复杂性和准确性之间进行权衡。我们提出了几种解决此问题的方法。还介绍了在著名警报网络上对该算法进行评估的结果。

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