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Theoretical analysis on feature extraction capability of class-augmented PCA

机译:类增强PCA特征提取能力的理论分析

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摘要

In this paper, we present a theoretical analysis on a novel supervised feature extraction method called class-augmented principal component analysis (CA-PCA), which is composed of processes for encoding the class information, augmenting the encoded information to data, and extracting features from class-augmented data by applying PCA. Through a combination of these processes, CA-PCA can extract features appropriate for classification. Our theoretical analysis aims to clarify the role of these processes and to provide an explanation on how CA-PCA can extract good features. Experimental results for various datasets are provided in order to show the validity of the proposed method for real problems. The effect of parameters on the quality of extracted features is also investigated and the rules Of thumb for determining the appropriate Parameters are provided.
机译:在本文中,我们对一种称为类增强主成分分析(CA-PCA)的新型监督特征提取方法进行了理论分析,该方法由对类信息进行编码,将编码信息扩充为数据以及提取特征的过程组成通过应用PCA从类扩展数据中获取。通过这些过程的组合,CA-PCA可以提取适合分类的特征。我们的理论分析旨在阐明这些过程的作用,并提供有关CA-PCA如何提取良好特征的解释。提供了各种数据集的实验结果,以证明所提出方法对实际问题的有效性。还研究了参数对提取的特征质量的影响,并提供了确定适当参数的经验法则。

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