采用协同进化算法对最近邻分类器进行实例选择、实例加权和特征加权的集成。

Joaquín Derrac, Isaac Triguero, Salvador Garcia, Francisco Herrera
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引用次数: 56

摘要

协同进化是进化计算的一个成功趋势,它允许我们定义给定问题的领域划分,或者通过使用进化算法将几种相关技术集成为一个。可以将其应用于高级分类方法的开发,这些方法将几种机器学习技术集成到单个提案中。本文提出了一种将实例选择、实例加权和特征加权集成到协同进化模型框架中的新方法。我们将其与广泛的进化和非进化相关方法进行比较,以显示使用共同进化来同时应用所考虑的技术的好处。通过非参数统计检验得到的结果对比表明,我们的方法在比较中优于其他方法,从而成为增强最近邻分类器任务的合适工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating instance selection, instance weighting, and feature weighting for nearest neighbor classifiers by coevolutionary algorithms.

Cooperative coevolution is a successful trend of evolutionary computation which allows us to define partitions of the domain of a given problem, or to integrate several related techniques into one, by the use of evolutionary algorithms. It is possible to apply it to the development of advanced classification methods, which integrate several machine learning techniques into a single proposal. A novel approach integrating instance selection, instance weighting, and feature weighting into the framework of a coevolutionary model is presented in this paper. We compare it with a wide range of evolutionary and nonevolutionary related methods, in order to show the benefits of the employment of coevolution to apply the techniques considered simultaneously. The results obtained, contrasted through nonparametric statistical tests, show that our proposal outperforms other methods in the comparison, thus becoming a suitable tool in the task of enhancing the nearest neighbor classifier.

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