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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >IFS-CoCo: Instance and feature selection based on cooperative coevolution with nearest neighbor rule
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IFS-CoCo: Instance and feature selection based on cooperative coevolution with nearest neighbor rule

机译:IFS-CoCo:基于具有最近邻居规则的协同协进化的实例和特征选择

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摘要

Feature and instance selection are two effective data reduction processes which can be applied to classification tasks obtaining promising results. Although both processes are defined separately, it is possible to apply them simultaneously.This paper proposes an evolutionary model to perform feature and instance selection in nearest neighbor classification. It is based on cooperative coevolution, which has been applied to many computational problems with great success.The proposed approach is compared with a wide range of evolutionary feature and instance selection methods for classification. The results contrasted through non-parametric statistical tests show that our model outperforms previously proposed evolutionary approaches for performing data reduction processes in combination with the nearest neighbor rule.
机译:特征和实例选择是两个有效的数据缩减过程,可将其应用于获得有希望的结果的分类任务。尽管这两个过程是分别定义的,但可以同时应用它们。本文提出了一种进化模型,用于在最近邻分类中执行特征和实例选择。它是基于协同协进化的,已成功地应用于许多计算问题。该方法与广泛的进化特征和实例选择方法进行了比较。通过非参数统计测试进行对比的结果表明,我们的模型优于先前提出的结合最近邻规则执行数据约简过程的进化方法。

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