Subset selection for multiple linear regression aims to construct a regression model that minimizes errors by selecting a small number of explanatory variables. Once a model is built, various statistical tests and diagnostics are conducted to validate the model and to determine whether the regression assumptions are met. Most traditional approaches require human decisions at this step. For example, the user may repeat adding or removing a variable until a satisfactory model is obtained. However, this trial-and-error strategy cannot guarantee that a subset that minimizes the errors while satisfying all regression assumptions will be found. In this paper, we propose a fully automated model building procedure for multiple linear regression sub...
We consider the multiple regression model Y<SUB>n</SUB>= X<SUB>n</SUB>β+ E<SUB>n</SUB>, where Y<SUB>...
Motivation: Validation of variable selection and predictive performance is crucial in construction o...
Originally published in 1990, the first edition of Subset Selection in Regression filled a significa...
Subset selection in multiple linear regression aims to choose a subset of candidate explanatory vari...
We address the so-called subset selection problem in multiple linear regression where the objective ...
This study presents comparisons of subset selection criteria used to help determine the best regre...
grantor: University of TorontoThe problem of determining which variables to keep in a lin...
We introduce a Mixed-Integer Linear Programming approach for building Regression models. These model...
This paper introduces a SAS/IML program to select among the multivariate model candidates based on a...
A new approach is proposed to address the subset recognition problem in multiple linear regression, ...
Regression analysis fits predictive models to data on a response variable and corresponding values f...
We present a new, data-driven method for automatically choosing a good subset of potential confoundi...
The problem of determining the best subset has two important aspects: the choice of a criteria defin...
A linearised approximation of the log-likelihood objective function is presented as a potential alte...
Machine learning and statistical models are increasingly used in a prediction context and in the pro...
We consider the multiple regression model Y<SUB>n</SUB>= X<SUB>n</SUB>β+ E<SUB>n</SUB>, where Y<SUB>...
Motivation: Validation of variable selection and predictive performance is crucial in construction o...
Originally published in 1990, the first edition of Subset Selection in Regression filled a significa...
Subset selection in multiple linear regression aims to choose a subset of candidate explanatory vari...
We address the so-called subset selection problem in multiple linear regression where the objective ...
This study presents comparisons of subset selection criteria used to help determine the best regre...
grantor: University of TorontoThe problem of determining which variables to keep in a lin...
We introduce a Mixed-Integer Linear Programming approach for building Regression models. These model...
This paper introduces a SAS/IML program to select among the multivariate model candidates based on a...
A new approach is proposed to address the subset recognition problem in multiple linear regression, ...
Regression analysis fits predictive models to data on a response variable and corresponding values f...
We present a new, data-driven method for automatically choosing a good subset of potential confoundi...
The problem of determining the best subset has two important aspects: the choice of a criteria defin...
A linearised approximation of the log-likelihood objective function is presented as a potential alte...
Machine learning and statistical models are increasingly used in a prediction context and in the pro...
We consider the multiple regression model Y<SUB>n</SUB>= X<SUB>n</SUB>β+ E<SUB>n</SUB>, where Y<SUB>...
Motivation: Validation of variable selection and predictive performance is crucial in construction o...
Originally published in 1990, the first edition of Subset Selection in Regression filled a significa...