We present a new Stata program, vselect, that helps users perform variable selection after performing a linear regression. Options for stepwise methods such as forward selection and backward elimination are provided. The user may specify Mallows’s Cp, Akaike’s information criterion, Akaike’s corrected information criterion, Bayesian information criterion, or R2 adjusted as the information criterion for the selection. When the user specifies the best subset option, the leaps-and-bounds algorithm (Furnival and Wilson, Technometrics 16: 499–511) is used to determine the best subsets of each predictor size. All the previously mentioned information criteria are reported for each of these subsets. We also provide options for doing variable select...
The selection of a descriptor, X, is crucial for improving the interpretation and prediction accurac...
The classical technique of stepwise regression provides a paridigm for variable selection in the lin...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
We present a new Stata program, vselect, that helps users perform variable selection after performin...
Abstract. We present a new Stata program, vselect, that helps users perform variable selection after...
With advanced capability in data collection, applications of linear regression analysis now often in...
Variable selection problem is one of the important problems in regression analysis. Over the years, ...
This article proposes a variable selection method termed “subtle uprooting” for linear regression. I...
A linearised approximation of the log-likelihood objective function is presented as a potential alte...
International audienceIn this paper, we investigate on 39 Variable Selection procedures to give an o...
Within the design of a machine learning-based solution for classification or regression problems, va...
This paper presents an information criteria based model selection procedure (called FIC) for choosin...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
In applied statistical studies, it is common to collect data on a large pool of candidate variables ...
Mathematical Subject Classification: 62F07; 62J20 Abstract: Variable selection is very important for...
The selection of a descriptor, X, is crucial for improving the interpretation and prediction accurac...
The classical technique of stepwise regression provides a paridigm for variable selection in the lin...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...
We present a new Stata program, vselect, that helps users perform variable selection after performin...
Abstract. We present a new Stata program, vselect, that helps users perform variable selection after...
With advanced capability in data collection, applications of linear regression analysis now often in...
Variable selection problem is one of the important problems in regression analysis. Over the years, ...
This article proposes a variable selection method termed “subtle uprooting” for linear regression. I...
A linearised approximation of the log-likelihood objective function is presented as a potential alte...
International audienceIn this paper, we investigate on 39 Variable Selection procedures to give an o...
Within the design of a machine learning-based solution for classification or regression problems, va...
This paper presents an information criteria based model selection procedure (called FIC) for choosin...
Advisors: Sanjib Basu.Committee members: Michael Geline; Balakrishna Hosmane; Alan Polansky; Duchwan...
In applied statistical studies, it is common to collect data on a large pool of candidate variables ...
Mathematical Subject Classification: 62F07; 62J20 Abstract: Variable selection is very important for...
The selection of a descriptor, X, is crucial for improving the interpretation and prediction accurac...
The classical technique of stepwise regression provides a paridigm for variable selection in the lin...
Abstract. The selection of variables in regression problems has occupied the minds of many statistic...