This paper articulates a new method of linear regression, “pace regression”, that addresses many drawbacks of standard regression reported in the literature-particularly the subset selection problem. Pace regression improves on classical ordinary least squares (OLS) regression by evaluating the effect of each variable and using a clustering analysis to improve the statistical basis for estimating their contribution to the overall regression. As well as outperforming OLS, it also outperforms-in a remarkably general sense-other linear modeling techniques in the literature, including subset selection procedures, which seek a reduction in dimensionality that falls out as a natural byproduct of pace regression. The paper defines six procedures t...
Linear regression is a much applied technique in many research fields. Its aim is to predict one or...
Regression Analysis (RA) is one of the frequently used tool for forecasting. The Ordinary Least Squa...
The purpose of model selection algorithms such as All Subsets, Forward Selection, and Backward Elimi...
This paper articulates a new method of linear regression, \pace regression, " that addresses ma...
This thesis presents a new approach to fitting linear models, called “pace regression”, which also o...
A method is introduced for variable selection and prediction in linear regression problems where the...
A common problem in applied regression analysis is to select the variables that enter a linear regre...
Originally published in 1990, the first edition of Subset Selection in Regression filled a significa...
We address the so-called subset selection problem in multiple linear regression where the objective ...
Stepwise regression methods are widely recognized as undesirable for explanatory purposes. As explor...
grantor: University of TorontoThe problem of determining which variables to keep in a lin...
In this paper, we compare the method of Gunter et al. (2011) for variable selection in treatment com...
Cataloged from PDF version of article.Clustered linear regression (CLR) is a new machine learning al...
In this paper, we compare the method of Gunter et al. (2011) for variable selection in treatment com...
ABSTRACT. A new method is proposed for variable screening, variable selection and prediction in line...
Linear regression is a much applied technique in many research fields. Its aim is to predict one or...
Regression Analysis (RA) is one of the frequently used tool for forecasting. The Ordinary Least Squa...
The purpose of model selection algorithms such as All Subsets, Forward Selection, and Backward Elimi...
This paper articulates a new method of linear regression, \pace regression, " that addresses ma...
This thesis presents a new approach to fitting linear models, called “pace regression”, which also o...
A method is introduced for variable selection and prediction in linear regression problems where the...
A common problem in applied regression analysis is to select the variables that enter a linear regre...
Originally published in 1990, the first edition of Subset Selection in Regression filled a significa...
We address the so-called subset selection problem in multiple linear regression where the objective ...
Stepwise regression methods are widely recognized as undesirable for explanatory purposes. As explor...
grantor: University of TorontoThe problem of determining which variables to keep in a lin...
In this paper, we compare the method of Gunter et al. (2011) for variable selection in treatment com...
Cataloged from PDF version of article.Clustered linear regression (CLR) is a new machine learning al...
In this paper, we compare the method of Gunter et al. (2011) for variable selection in treatment com...
ABSTRACT. A new method is proposed for variable screening, variable selection and prediction in line...
Linear regression is a much applied technique in many research fields. Its aim is to predict one or...
Regression Analysis (RA) is one of the frequently used tool for forecasting. The Ordinary Least Squa...
The purpose of model selection algorithms such as All Subsets, Forward Selection, and Backward Elimi...