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Supervised Kernel Principal Component Analysis by Most Expressive Feature Reordering

机译:通过最具表现力的特征排序对有监督的内核主成分进行分析

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摘要

The presented paper is concerned with feature space derivation through feature selection. The selection is performed on results of kernel Principal Component Analysis (kPCA) of input data samples. Several criteria that drive feature selection process are introduced and their performance is assessed and compared against the reference approach, which is a combination of kPCA and most expressive feature reordering based on the Fisher linear discriminant criterion. It has been shown that some of the proposed modifications result in generating feature spaces with noticeably better (at the level of approximately 4%) class discrimination properties.
机译:提出的论文涉及通过特征选择的特征空间推导。选择是对输入数据样本的内核主成分分析(kPCA)的结果执行的。介绍了几种驱动特征选择过程的标准,并评估了它们的性能,并与参考方法进行了比较,该参考方法是kPCA和基于Fisher线性判别标准的最具表现力的特征重新排序的组合。已经表明,某些提议的修改导致生成具有明显更好(大约4%的级别)类区分属性的特征空间。

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