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A comparative study of two kernel ideas for nonlinear feature extraction

机译:非线性特征提取的两种核心思想比较研究

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Using the kernel trick idea and the kernels as features idea, we can construct two kinds of nonlinear feature spaces, where linear feature extraction algorithms can be employed to extract nonlinear features. Thus, we have two approaches to transform an existing linear feature extraction algorithm into its nonlinear counterpart. It has been proved that they are equivalent up to different scalings on each feature by rigorous theoretical analysis. In this paper, we perform experiments on several benchmark datasets and give a comparative study of the two kernel ideas applied to certain feature extraction algorithms such as linear discriminant analysis and principal component analysis. These results provide a better understanding of the kernel method.
机译:利用核技巧思想和核作为特征思想,我们可以构造两种非线性特征空间,其中可以使用线性特征提取算法来提取非线性特征。因此,我们有两种方法可以将现有的线性特征提取算法转换成其非线性对应物。通过严格的理论分析,已证明它们等效于每个特征的不同缩放比例。在本文中,我们对几个基准数据集进行了实验,并对应用于某些特征提取算法(例如线性判别分析和主成分分析)的两种内核思想进行了比较研究。这些结果提供了对内核方法的更好理解。

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