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A novel multivariate regression approach based on kernel partial least squares with orthogonal signal correction

机译:基于核偏最小二乘的正交信号校正新多元回归方法

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摘要

This paper introduces a novel multivariate regression approach based on kernel partial least squares (KPLS) with orthogonal signal correction (OSC). OSC has been proposed as a data preprocessing method that removes from X information not correlated to Y. KPLS is a promising regression method for tackling nonlinear systems because it can efficiently compute regression coefficients in high-dimensional feature spaces by means of nonlinear kernel functions. Unlike other nonlinear partial least squares (PLS) techniques KPLS does not entail any nonlinear optimization procedures and has a complexity similar to that of linear PLS. In this paper, the prediction performance of the proposed approach (OSC-KPLS) is compared to those of PLS, OSC-PLS and KPLS using three examples. OSC-KPLS effectively simplifies both the structure and interpretation of the resulting regression model and shows superior prediction performance compared to linear PLS.
机译:本文介绍了一种新的基于核偏最小二乘(KPLS)和正交信号校正(OSC)的多元回归方法。已经提出OSC作为一种数据预处理方法,该方法将从与Y不相关的X信息中删除。KPLS是用于处理非线性系统的一种有前途的回归方法,因为它可以通过非线性核函数有效地计算高维特征空间中的回归系数。与其他非线性偏最小二乘(PLS)技术不同,KPLS不需要任何非线性优化程序,并且其复杂度类似于线性PLS。在本文中,使用三个示例将提出的方法(OSC-KPLS)的预测性能与PLS,OSC-PLS和KPLS的预测性能进行了比较。与线性PLS相比,OSC-KPLS有效地简化了所得回归模型的结构和解释,并显示了出众的预测性能。

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