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Feature Selection Based on Linear Discriminant Analysis

机译:基于线性判别分析的特征选择

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摘要

In this paper we propose a novel feature selection method based on linear discriminant analysis (LDA). To view feature selection as a numerical computation problem, the paper shows, for the first time, that it is feasible to employ LDA for feature selection. The proposed method also shows that different components statistically have different effects on the feature selection result, which can be evaluated by the components of the eigenvector. As there are multiple eigenvectors, the proposed method takes a small number of eigenvectors into account when evaluating the effect of the component of the sample data. The experimental results on face recognition show that the proposed method is not only able to greatly reduce the dimensionality of the original samples, but also able to yield promising classification accuracies.
机译:在本文中,我们提出了一种基于线性判别分析(LDA)的新颖特征选择方法。为了将特征选择视为一个数值计算问题,本文首次表明采用LDA进行特征选择是可行的。所提出的方法还表明,不同的分量在统计上对特征选择结果具有不同的影响,可以通过特征向量的分量对其进行评估。由于存在多个特征向量,因此该方法在评估样本数据分量的影响时会考虑少量特征向量。在人脸识别方面的实验结果表明,该方法不仅可以大大降低原始样本的维数,而且还具有很好的分类精度。

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