The development of Holte's 1R classifier

C. Nevill-Manning, G. Holmes, I. Witten
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引用次数: 33

Abstract

The 1R machine learning scheme (Holte, 1993) is a very simple one that proves surprisingly effective on the standard datasets commonly used for evaluation. This paper describes the method and discusses two aspects of the algorithm that bear further analysis: the way, that intervals are formed when discretizing continuously-valued attributes; and the way missing values are treated. We then show how the algorithm can be extended to avoid a problem endemic to most practical machine learning algorithms-their frequent dismissal of an attribute as irrelevant when in fact it is highly relevant when combined with other attributes.
霍尔特1R分类器的发展
1R机器学习方案(Holte, 1993)是一个非常简单的方案,在通常用于评估的标准数据集上证明了惊人的有效性。本文描述了该方法,并讨论了该算法中值得进一步分析的两个方面:连续值属性离散形成区间的方式;以及对缺失值的处理方式。然后,我们展示了如何扩展该算法,以避免大多数实用机器学习算法所特有的问题——它们经常将一个属性视为不相关而忽略掉,而事实上,当它与其他属性结合在一起时,它是高度相关的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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