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Feature Extractions for Small Sample Size Classification Problem

机译:小样本量分类问题的特征提取

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Much research has shown that the definitions of within-class and between-class scatter matrices and regularization technique are the key components to design a feature extraction for small sample size problems. In this paper, we illustrate the importance of another key component, eigenvalue decomposition method, and a new regularization technique was proposed. In the hyperspectral image experiment, the effects of these three components of feature extraction are explored on ill-posed and poorly posed conditions. The experimental results show that different regularization methods need to cooperate with different eigenvalue decomposition methods to reach the best performance, the proposed regularization method, regularized feature extraction (RFE) outperform others, and the best feature extraction for a small sample size classification problem is RFE with nonparametric weighted scatter matrices
机译:许多研究表明,类内和类间散布矩阵的定义以及正则化技术是设计针对小样本量问题的特征提取的关键组件。在本文中,我们说明了另一个关键组件的特征值分解方法的重要性,并提出了一种新的正则化技术。在高光谱图像实验中,探讨了特征提取的这三个组成部分在不适定和不适定条件下的效果。实验结果表明,不同的正则化方法需要与不同的特征值分解方法配合使用才能达到最佳性能,所提出的正则化方法,正则化特征提取(RFE)优于其他方法,对于小样本量分类问题,最佳特征提取为RFE具有非参数加权散射矩阵

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