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A Feature Subset Evaluation Method Based on Multi-objective Optimization

机译:一种基于多目标优化的特征子集评估方法

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To remove the irrelevant and redundant features from the high-dimensional data while ensuring classification accuracy, a supervised feature subset evaluation method based on multi-objective optimization has been proposed in this paper. Four aspects, sparsity of feature space, classification accuracy, information loss degree and feature subset stability, were took into account in the proposed method and the Multi-objective functions were constructed. Then the popular NSGA-II algorithm was used for optimization of the four objectives in the feature selection process. Finally the feature subset was selected based on the obtained feature weight vector according the four evaluation criteria. The proposed method was tested on 4 standard data sets using two kinds of classifier. The experiment results show that the proposed method can guarantee the higher classification accuracy even though only few numbers of features selected than the other methods. On the other hand, the information loss degrees of the proposed method are the lowest which demonstrates that the selected feature subsets of the proposed method can represent the original data sets best.
机译:为了在确保分类准确度的同时,从高维数据中删除无关和冗余特征,本文提出了一种基于多目标优化的监督特征子集评估方法。在所提出的方法中考虑了四个方面,特征空间,分类准确度,信息丢失程度和特征子集稳定性的稀疏性,构建了多目标函数。然后,流行的NSGA-II算法用于优化特征选择过程中的四个目标。最后,基于根据四个评估标准基于所获得的特征权重向量选择特征子集。使用两种分类器在4个标准数据集中测试所提出的方法。实验结果表明,即使仅比其他方法选择的几个特征,所提出的方法也可以保证较高的分类准确性。另一方面,所提出的方法的信息丢失程度是表明所提出的方法的所选择的特征子集可以代表最佳数据集的最低点。

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