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Feature Construction and Feature Selection in Presence of Attribute Interactions

机译:在属性交互存在下的功能构造和功能选择

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When used for data reduction, feature selection may successfully identify and discard irrelevant attributes, and yet fail to improve learning accuracy because regularities in the concept are still opaque to the learner. In that case, it is necessary to highlight regularities by constructing new characteristics that abstract the relations among attributes. This paper highlights the importance of feature construction when attribute interaction is the main source of learning difficulty and the underlying target concept is hard to discover by a learner using only primitive attributes. An empirical study centered on predictive accuracy shows that feature construction significantly outperforms feature selection because, even when done perfectly, detection of interacting attributes does not sufficiently facilitates discovering the target concept.
机译:当用于数据减少时,特征选择可以成功识别和丢弃无关的属性,但是未能提高学习准确性,因为概念中的规律仍然是对学习者的不透明。在这种情况下,有必要通过构建抽象属性之间关系的新特征来突出整数。本文突出了特征结构的重要性,当属性交互是学习难度的主要来源,并且仅使用原始属性的学习者难以发现底层目标概念。以预测准确度为中心的经验研究表明,特征结构显着优于特征选择,因为即使在完全完成时,也没有足够促进发现目标概念的互动属性。

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