MSc, North-West University, Mafikeng CampusMost previous studies have applied the covariate selection method proposed by Hosmer and Lemeshow (2000) (also referred to in the current study as the Hosmer and Lemeshow algorithm (H-L algorithm)) in attempt to fit parsimonious regression models, However, such previous studies did not evaluate or question the efficiency of the H-L algorithm against other common purposeful selection covariate selection methods, but they were merely application studies. As such, little is known about the efficiency of this renowned and novel purposeful covariate selection method. This study sought to bridge this gap. The study conducted a comparative experiment which sought to test the efficiency of the H-L algorith...
© 2015 Elsevier B.V. Dimension-reduction based regression methods reduce the predictors to a few com...
Dimension-reduction based regression methods reduce the predictors to a few components and predict t...
The covariance selection problem captures many applications in various fields, and it has been well ...
The selection of essential variables in logistic regression is vital because of its extensive use in...
PhD (Science with Business Mathematics), North-West University, Potchefstroom CampusLogistic regress...
Simulation was used to evaluate the performances of several methods of variable selection in regress...
A linearised approximation of the log-likelihood objective function is presented as a potential alte...
There is no phenomenal method practitioners can use as a appropriate tool for model validation when ...
Model selection is a core topic in regression analysis, referring to a set of exploratory approaches...
In this Master Thesis, we have analytically derived and numerically implemented three estimators of ...
In this paper, we compare the method of Gunter et al. (2011) for variable selection in treatment com...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
This paper is devoted to model selection in logistic regression. We extend the model selection princ...
In this paper, we compare the method of Gunter et al. (2011) for variable selection in treatment com...
A newly established method for optimizing logistic models via a minorization-majorization procedure ...
© 2015 Elsevier B.V. Dimension-reduction based regression methods reduce the predictors to a few com...
Dimension-reduction based regression methods reduce the predictors to a few components and predict t...
The covariance selection problem captures many applications in various fields, and it has been well ...
The selection of essential variables in logistic regression is vital because of its extensive use in...
PhD (Science with Business Mathematics), North-West University, Potchefstroom CampusLogistic regress...
Simulation was used to evaluate the performances of several methods of variable selection in regress...
A linearised approximation of the log-likelihood objective function is presented as a potential alte...
There is no phenomenal method practitioners can use as a appropriate tool for model validation when ...
Model selection is a core topic in regression analysis, referring to a set of exploratory approaches...
In this Master Thesis, we have analytically derived and numerically implemented three estimators of ...
In this paper, we compare the method of Gunter et al. (2011) for variable selection in treatment com...
Logistic regression is the standard method for assessing predictors of diseases. In logistic regress...
This paper is devoted to model selection in logistic regression. We extend the model selection princ...
In this paper, we compare the method of Gunter et al. (2011) for variable selection in treatment com...
A newly established method for optimizing logistic models via a minorization-majorization procedure ...
© 2015 Elsevier B.V. Dimension-reduction based regression methods reduce the predictors to a few com...
Dimension-reduction based regression methods reduce the predictors to a few components and predict t...
The covariance selection problem captures many applications in various fields, and it has been well ...