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Learning accurate and concise naive Bayes classifiers from attribute value taxonomies and data

机译:从属性值分类法和数据中学习准确,简洁的朴素贝叶斯分类器

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摘要

In many application domains, there is a need for learning algorithms that can effectively exploit attribute value taxonomies (AVT)-hierarchical groupings of attribute values-to learn compact, comprehensible and accurate classifiers from data-including data that are partially specified. This paper describes AVT-NBL, a natural generalization of the naive Bayes learner (NBL), for learning classifiers from AVT and data. Our experimental results show that AVT-NBL is able to generate classifiers that are substantially more compact and more accurate than those produced by NBL on a broad range of data sets with different percentages of partially specified values. We also show that AVT-NBL is more efficient in its use of training data: AVT-NBL produces classifiers that outperform those produced by NBL using substantially fewer training examples.
机译:在许多应用领域中,需要一种能够有效利用属性值分类法(AVT)(属性值的层次分组)的学习算法,以从包括部分指定的数据在内的数据中学习紧凑,可理解和准确的分类器。本文介绍了AVT-NBL,它是朴素贝叶斯学习器(NBL)的自然概括,用于从AVT和数据中学习分类器。我们的实验结果表明,AVT-NBL能够生成分类器,该分类器比NBL在具有不同百分比的部分指定值的广泛数据集上所产生的分类器更为紧凑和准确。我们还表明,AVT-NBL在训练数据的使用上效率更高:AVT-NBL生成的分类器比NBL生成的分类器要少得多,使用的训练示例却少得多。

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