通过特征选择提高分类精度

C. V. Bratu, T. Muresan, R. Potolea
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引用次数: 29

摘要

高精度对于任何数据挖掘过程都是必不可少的。影响数据挖掘问题成功与否的很大一部分因素在于所使用数据的质量。特征选择是在将数据集呈现给学习方案之前对其进行细化的工具之一。本文分析了一种用于特征选择的包装器方法,以提高分类精度。包装器被视为一个由生成过程、求值函数和验证过程组成的3元组。对这三种成分的几种组合进行了实验评估。结果表明,特征选择提高了分类精度,加快了训练过程。此外,提出了两种鲁棒组合:一种是不断达到最高精度的组合,另一种是显著提高诱导器的初始精度的组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving classification accuracy through feature selection
High accuracy is essential to any data mining process. A large part of the factors which influence the success of a data mining problem reside in the quality of the data used. Feature selection represents one of the tools which can refine a dataset before presenting it to a learning scheme. This paper analyzes a wrapper approach for feature selection, with the purpose of boosting the classification accuracy. A wrapper is viewed as a 3-tuple consisting of a generation procedure, an evaluation function and a validation procedure. Experimental evaluations have been performed for several combinations of the three components. The results have shown that feature selection improves the classification accuracy and speeds up the training process. Moreover, two robust combinations are proposed: one that constantly achieves highest accuracy, and one which significantly boosts the initial accuracy of the inducer.
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