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Principal Component Analysis With Complex Kernel: The Widely Linear Model

机译:复杂内核的主成分分析:广泛的线性模型

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摘要

Nonlinear complex representations, via the use of complex kernels, can be applied to model and capture the nonlinearities of complex data. Even though the theoretical tools of complex reproducing kernel Hilbert spaces (CRKHS) have been recently successfully applied to the design of digital filters and regression and classification frameworks, there is a limited research on component analysis and dimensionality reduction in CRKHS. The aim of this brief is to properly formulate the most popular component analysis methodology, i.e., Principal Component Analysis (PCA), in CRKHS. In particular, we define a general widely linear complex kernel PCA framework. Furthermore, we show how to efficiently perform widely linear PCA in small sample sized problems. Finally, we show the usefulness of the proposed framework in robust reconstruction using Euler data representation.
机译:通过使用复杂核,非线性复杂表示可以用于建模和捕获复杂数据的非线性。尽管复杂复制核希尔伯特空间(CRKHS)的理论工具最近已成功地应用于数字滤波器,回归和分类框架的设计,但对CRKHS的成分分析和降维的研究仍然有限。本简介的目的是在CRKHS中正确制定最流行的成分分析方法,即主成分分析(PCA)。特别是,我们定义了一个通用的,广泛线性的复杂内核PCA框架。此外,我们展示了如何在小样本规模的问题中有效地执行广泛的线性PCA。最后,我们证明了所提出的框架在使用欧拉数据表示的鲁棒重建中的有用性。

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