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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Bayesian network refinement via machine learning approach
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Bayesian network refinement via machine learning approach

机译:通过机器学习方法改进贝叶斯网络

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摘要

An approach to refining Bayesian network structures from new data is developed. Most previous work has only considered the refinement of the network's conditional probability parameters and has not addressed the issue of refining the network's structure. We tackle this problem by a machine learning approach based on a formalism known as the minimum description length (MDL) principle. The MDL principle is well suited to this task since it can perform tradeoffs between the accuracy, simplicity, and closeness to the existent structure. Another salient feature of this refinement approach is the capability of refining a network structure using partially specified data. Moreover, a localization scheme is developed for efficient computation of the description lengths since direct evaluation involves exponential time resources.
机译:开发了一种从新数据中提炼贝叶斯网络结构的方法。以前的大多数工作仅考虑了网络条件概率参数的优化,而没有解决优化网络结构的问题。我们通过一种基于最小化描述长度(MDL)原理的形式主义的机器学习方法来解决此问题。 MDL原理非常适合此任务,因为它可以在准确性,简单性和与现有结构的紧密度之间进行折衷。这种改进方法的另一个显着特征是能够使用部分指定的数据来改进网络结构。此外,由于直接评估涉及指数时间资源,因此开发了一种本地化方案以有效地描述长度。

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