Empowering Simultaneous Feature and Instance Selection in Classification Problems through the Adaptation of Two Selection Algorithms

R. D. Carmo, F. Freitas, J. Souza
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引用次数: 2

Abstract

This paper proposes a new approach to data selection, a key issue in classification problems. This approach, which is based on a feature selection algorithm and one instance selection algorithm, reduces the original dataset in two dimensions, selecting relevant features and retaining important instances simultaneously. The search processes for the best feature and instance subsets occur separately yet, due to the influence of features in the importance of instances and vice versa, they bias one another. The experiments validate the proposed approach showing that this existing relation between features and instances can be reproduced when constructing data selection algorithms and that it leads to a quality improval comparing to the sequential execution of both algorithms.
通过两种选择算法的适配,增强分类问题中特征和实例的同时选择能力
本文提出了一种新的数据选择方法,这是分类问题中的一个关键问题。该方法在特征选择算法和单实例选择算法的基础上,对原始数据集进行二维约简,在选择相关特征的同时保留重要的实例。最佳特征子集和实例子集的搜索过程是分开进行的,由于特征对实例重要性的影响,反之亦然,它们相互偏向。实验验证了所提出的方法,表明在构建数据选择算法时可以再现特征和实例之间的这种现有关系,并且与两种算法的顺序执行相比,它可以提高质量。
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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