An Approximate Version of Kernel PCA

Shawn Martin
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引用次数: 8

Abstract

We propose an analog of kernel principal component analysis (kernel PCA). Our algorithm is based on an approximation of PCA which uses Gram-Schmidt orthonormalization. We combine this approximation with support vector machine kernels to obtain a nonlinear generalization of PCA. By using our approximation to PCA we are able to provide a more easily computed (in the case of many data points) and readily interpretable version of kernel PCA. After demonstrating our algorithm on some examples, we explore its use in applications to fluid flow and microarray data
核主成分分析的近似版本
我们提出了一个核主成分分析(核主成分分析)的类比。我们的算法是基于近似的PCA,它使用Gram-Schmidt标准正交化。我们将此近似与支持向量机核相结合,得到主成分分析的非线性泛化。通过使用我们对PCA的近似,我们能够提供一个更容易计算(在许多数据点的情况下)和易于解释的内核PCA版本。在一些例子上展示了我们的算法之后,我们探索了它在流体流动和微阵列数据中的应用
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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