Enhancing Classification Accuracy with the Help of Feature Maximization Metric

Jean-Charles Lamirel
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引用次数: 3

Abstract

This paper deals with a new feature selection and feature contrasting approach for enhancing classification of both numerical and textual data. The method is experienced on different types of reference datasets. The paper illustrates that the proposed approach provides a very significant performance increase in all the studied cases clearly figuring out its generic character.
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利用特征最大化度量提高分类精度
本文研究了一种新的特征选择和特征对比方法,以增强数字和文本数据的分类能力。该方法在不同类型的参考数据集上进行了实验。本文表明,该方法在所有研究案例中都有非常显著的性能提升,并明确了其共性。
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