A family of regularized least squares regression models in a Reproducing Kernel Hilbert Space is extended by the kernel partial least squares (PLS) regression model. Similar to principal components regression (PCR), PLS is a method based on the projection of input (explanatory) variables to the latent variables (components). However, in contrast to PCR, PLS creates the components by modeling the relationship between input and output variables while maintaining most of the information in the input variables. PLS is useful in situations where the number of explanatory variables exceeds the number of observations and/or a high level of multicollinearity among those variables is assumed. Motivated by this fact we will provide a kernel PLS algor...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
The paper proposes to combine an orthogonal least squares (OLS) model selection with local regularis...
In regression analysis, existence of multicollinearity (collinearity) on given data, say X, can seri...
This paper summarizes recent results on applying the method of par-tial least squares (PLS) in a rep...
Abstract. We focus on covariance criteria for finding a suitable subspace for regression in a reprod...
In this study, Kernel Principal Component Analysis (KPCA) is applied as feature selection in a high-...
The theory of reproducing kernel has been recognized as a useful instrument in several areas of math...
The continuum regression technique provides an appealing regression framework connecting ordinary le...
The continuum regression technique provides an appealing regression framework connecting ordinary le...
In this paper, we propose the application of the Kernel Principal Component Analysis (PCA) technique...
In statistical analyses, especially those using a multiresponse regression model approach, a mathema...
AbstractPLS initially creates uncorrelated latent variables which are linear combinations of the ori...
We propose a new nonparametric regression method for high-dimensional data, nonlinear partial least ...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
The kernel regularized least squares (KRLS) method uses the kernel trick to perform non-linear regre...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
The paper proposes to combine an orthogonal least squares (OLS) model selection with local regularis...
In regression analysis, existence of multicollinearity (collinearity) on given data, say X, can seri...
This paper summarizes recent results on applying the method of par-tial least squares (PLS) in a rep...
Abstract. We focus on covariance criteria for finding a suitable subspace for regression in a reprod...
In this study, Kernel Principal Component Analysis (KPCA) is applied as feature selection in a high-...
The theory of reproducing kernel has been recognized as a useful instrument in several areas of math...
The continuum regression technique provides an appealing regression framework connecting ordinary le...
The continuum regression technique provides an appealing regression framework connecting ordinary le...
In this paper, we propose the application of the Kernel Principal Component Analysis (PCA) technique...
In statistical analyses, especially those using a multiresponse regression model approach, a mathema...
AbstractPLS initially creates uncorrelated latent variables which are linear combinations of the ori...
We propose a new nonparametric regression method for high-dimensional data, nonlinear partial least ...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
The kernel regularized least squares (KRLS) method uses the kernel trick to perform non-linear regre...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
The paper proposes to combine an orthogonal least squares (OLS) model selection with local regularis...
In regression analysis, existence of multicollinearity (collinearity) on given data, say X, can seri...