Ridge regression is a classical statistical technique that attempts to address the bias-variance trade-off in the design of linear regression models. A reformulation of ridge regression in dual variables permits a non-linear form of ridge regression via the well-known 'kernel trick'. Unfortunately, unlike support vector regression models, the resulting kernel expansion is typically fully dense. In this paper, we introduce a reduced rank kernel ridge regression (RRKRR) algorithm, capable of generating an optimally sparse kernel expansion that is functionally identical to that resulting from conventional kernel ridge regression (KRR). The proposed method is demonstrated to out-perform an alternative sparse kernel ridge regression algorithm on...
International audienceLarge-scale kernel ridge regression (KRR) is limited by the need to store a la...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
Ridge regression is a classical statistical technique that attempts to address the bias-variance tra...
Abstract: In multivariate linear regression, it is often assumed that the response matrix is intrins...
Abstract: In multivariate linear regression, it is often assumed that the response matrix is intrins...
In multivariate linear regression, it is often assumed that the response matrix is intrinsically of ...
In this paper we study a dual version of the Ridge Regression procedure. It allows us to perform non...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
Kernel ridge regression, KRR, is a generalization of linear ridge regression that is non-linear in t...
We propose an ensemble of kernel ridge regression based classifiers in this paper. Kernel ridge regr...
Ridge regression method is an improved method when the assumptions of independence of the explanator...
Ridge regression method is an improved method when the assumptions of independence of the explanator...
Ridge regression method is an improved method when the assumptions of independence of the explanator...
The presence of the multicollinearity problem in the predictor data causes the variance of the ordin...
International audienceLarge-scale kernel ridge regression (KRR) is limited by the need to store a la...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
In several supervised learning applications, it happens that reconstruction methods have to be appli...
Ridge regression is a classical statistical technique that attempts to address the bias-variance tra...
Abstract: In multivariate linear regression, it is often assumed that the response matrix is intrins...
Abstract: In multivariate linear regression, it is often assumed that the response matrix is intrins...
In multivariate linear regression, it is often assumed that the response matrix is intrinsically of ...
In this paper we study a dual version of the Ridge Regression procedure. It allows us to perform non...
Kernel methods are a well-studied approach for addressing regression problems by implicitly mapping ...
Kernel ridge regression, KRR, is a generalization of linear ridge regression that is non-linear in t...
We propose an ensemble of kernel ridge regression based classifiers in this paper. Kernel ridge regr...
Ridge regression method is an improved method when the assumptions of independence of the explanator...
Ridge regression method is an improved method when the assumptions of independence of the explanator...
Ridge regression method is an improved method when the assumptions of independence of the explanator...
The presence of the multicollinearity problem in the predictor data causes the variance of the ordin...
International audienceLarge-scale kernel ridge regression (KRR) is limited by the need to store a la...
We explore the aims of, and relationships between, various kernel-type regression estimators. To do ...
In several supervised learning applications, it happens that reconstruction methods have to be appli...