IFS-CoCo: Instance and feature selection based on cooperative coevolution with nearest neighbor rule
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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.
论文关键词:Evolutionary algorithms,Feature selection,Instance selection,Cooperative coevolution,Nearest neighbor
论文评审过程:Received 25 June 2009, Revised 6 December 2009, Accepted 17 December 2009, Available online 24 December 2009.
论文官网地址:https://doi.org/10.1016/j.patcog.2009.12.012