中心核主成分是如何与回归任务相关的?——准确的分析

M. Yukawa, K. Müller, Yuto Ogino
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引用次数: 0

摘要

本文给出了非线性回归问题中核主成分对相关信息贡献的精确解析表达式。Braun, Buhmann和m ller在2008年提出了一项相关研究,其中给出了一般监督学习问题的贡献上限,但具有“非中心”核pca。我们的分析表明,在显式定心操作下,核回归的相关信息包含在有限数量的主要核主成分中,如在“无中心”核pca情况下,如果核匹配底层非线性函数,则中心核矩阵的特征值会迅速衰减。通过仿真比较了基于最小二乘的方法与有中心和无中心核pca的回归性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How are the Centered Kernel Principal Components Relevant to Regression Task? -An Exact Analysis
We present an exact analytic expression of the contributions of the kernel principal components to the relevant information in a nonlinear regression problem. A related study has been presented by Braun, Buhmann, and Müller in 2008, where an upper bound of the contributions was given for a general supervised learning problem but with “uncentered” kernel PCAs. Our analysis clarifies that the relevant information of a kernel regression under explicit centering operation is contained in a finite number of leading kernel principal components, as in the “uncentered” kernel-Pca case, if the kernel matches the underlying nonlinear function so that the eigenvalues of the centered kernel matrix decay quickly. We compare the regression performances of the least-square-based methods with the centered and uncentered kernel PCAs by simulations.
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