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Algorithm for Graphical Bayesian Modeling Based on Multiple Regressions

机译:基于多重回归的图形贝叶斯建模算法

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摘要

One of the main factors for the knowledge discovery success is related to the comprehensibility of the patterns discovered by applying data mining techniques. Amongst which we can point out the Bayesian networks as one of the most prominent when considering the easiness of knowledge interpretation achieved. Bayesian networks, however, present limitations and disadvantages regarding their use and applicability. This paper presents an extension for the improvement of Bayesian networks, incorporating models of multiple regression for structure learning.
机译:知识发现成功的主要因素之一与通过应用数据挖掘技术发现的模式的可理解性有关。其中,在考虑实现知识解释的难易程度时,我们可以指出贝叶斯网络是最突出的网络之一。但是,贝叶斯网络在使用和适用性方面存在局限性和劣势。本文提出了贝叶斯网络改进的扩展,其中包括用于结构学习的多元回归模型。

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