In multivariate linear regression, it is often assumed that the response matrix is intrinsically of lower rank. This could be because of the correlation structure among the prediction variables or the coefficient matrix being lower rank. To accommodate both, we propose a reduced rank ridge regression for multivariate linear regression. Specifically, we combine the ridge penalty with the reduced rank constraint on the coefficient matrix to come up with a computationally straightforward algorithm. Numerical studies indicate that the proposed method consistently outperforms relevant competitors. A novel extension of the proposed method to the reproducing kernel Hilbert space (RKHS) set‐up is also developed. © 2011 Wiley Periodicals, Inc. Stati...
In this paper we describe a computer intensive method to find the ridge parameter in a prediction or...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
2002 Mathematics Subject Classification: 62J05, 62G35.In classical multiple linear regression analys...
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...
Ridge regression is a classical statistical technique that attempts to address the bias-variance tra...
Ridge regression is a classical statistical technique that attempts to address the bias-variance tra...
Multivariate regression is a generalization of the univariate regression to the case where we are in...
Multivariate regression is a generalization of the univariate regression to the case where we are in...
We introduce a new criterion, the Rank Selection Criterion (RSC), for selecting the optimal reduced ...
Abstract: In classical multiple linear regression analysis problems will occur if the regressors are...
Multivariate multiple linear regression is multiple linear regression, but with multiple responses. ...
Abstract Abstract Multivariate multiple linear regression is multiple linear regression, but with mu...
In this study, the techniques of ridge regression model as alternative to the classical ordinary lea...
The present work proposes tests for reduced rank in multivariate regression coefficient matrices, un...
In this paper we describe a computer intensive method to find the ridge parameter in a prediction or...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
2002 Mathematics Subject Classification: 62J05, 62G35.In classical multiple linear regression analys...
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...
Ridge regression is a classical statistical technique that attempts to address the bias-variance tra...
Ridge regression is a classical statistical technique that attempts to address the bias-variance tra...
Multivariate regression is a generalization of the univariate regression to the case where we are in...
Multivariate regression is a generalization of the univariate regression to the case where we are in...
We introduce a new criterion, the Rank Selection Criterion (RSC), for selecting the optimal reduced ...
Abstract: In classical multiple linear regression analysis problems will occur if the regressors are...
Multivariate multiple linear regression is multiple linear regression, but with multiple responses. ...
Abstract Abstract Multivariate multiple linear regression is multiple linear regression, but with mu...
In this study, the techniques of ridge regression model as alternative to the classical ordinary lea...
The present work proposes tests for reduced rank in multivariate regression coefficient matrices, un...
In this paper we describe a computer intensive method to find the ridge parameter in a prediction or...
This article proposes a novel approach to linear dimension reduction for regression using nonparamet...
2002 Mathematics Subject Classification: 62J05, 62G35.In classical multiple linear regression analys...