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Kernel PLS Regression II: Kernel Partial Least Squares Regression by Projecting Both Independent and Dependent Variables into Reproducing Kernel Hilbert Space

机译:Kernel PLS回归II:通过将独立和依赖变量投射到再现内核Hilbert空间来通过将独立和依赖变量投射到核心最小二乘性

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we propose a regression method using partial least square (PLS) technique and kernel method, which we refer to as kernel partial least square regression II to distinguish the conventional kernel PLS regression. The motivation of the conventional kernel PLS regression is to establish a coordinator system where the independent and dependent variables have a stronger correlation, and which models a regression model using the coordinator system. However, it projects independent variables into a reproducing kernel Hilbert space (RKHS) alone. The proposal extends the basic framework of conventional kernel PLS regression. The proposed method does not only project independent variables into the RKHS, but also dependent variables, and establishes a coordinator system where the independent and dependent variables have a stronger correlation. We use two function regression cases to evaluate the proposed method compared with the conventional kernel PLS regression. The regression performance of the proposed method has almost the same regression accuracy arising from the evaluation result, and this depends on the regression tasks. We explain the correlation calculations of our proposed method, conventional kernel PLS regression, and PLS regression. The meaning of correlation depends on the application in question. We also analyse and discuss the algorithm implementation, correlation meaning, and other issues for further development of the proposal.
机译:我们提出了一种利用部分最小二乘(PLS)技术和内核方法的回归方法,我们将其称为内核部分最小二乘回归II以区分传统的内核PLS回归。传统内核PLS回归的动机是建立一个协调系统,其中独立和相关变量具有更强的相关性,并且使用协调系统模拟回归模型。但是,它将独立的变量与单独的再生内核(RKHS)项目投影为再现内核希尔伯特空间(RKHS)。该提案扩展了常规内核PLS回归的基本框架。该方法不仅将独立的变量投影到RKHS中,而且还在依赖变量中,并建立一个协调器系统,其中独立和相关变量具有更强的相关性。我们使用两个功能回归案例来评估所提出的方法与传统的核PLS回归相比。所提出的方法的回归性能几乎具有评估结果产生的回归精度,这取决于回归任务。我们解释了我们所提出的方法,传统核PLS回归和PLS回归的相关计算。相关性的含义取决于有问题的应用。我们还分析并讨论算法实施,相关性意义和其他问题,以便进一步发展提案。

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