Logistic regression is a widely used method to model categorical response data, and maximum likelihood (ML) estimation has widespread use in logistic regression. Although ML method is the most used method to estimate the regression coefficients in logistic regression model, multicollinearity seriously affects the ML estimator. To remedy the undesirable effects of multicollinearity, estimators alternative to ML are proposed. Drawing on the similarities between the multiple linear and logistic regressions, ridge, Liu and two parameter estimators are proposed which are based on the ML estimator. On the other hand, first-order approximated ridge estimator is proposed for use in logistic regression. This study will present further solutions to t...
<p>In logistic regression with nonignorable missing responses, Ibrahim and Lipsitz proposed a method...
© 2017, Springer-Verlag Berlin Heidelberg. In this paper, we deal with parameter estimation of the l...
Logistic Regression, being both a predictive and an explanatory method, is one of the most commonly ...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
In this paper, the (Formula presented.) class logistic estimator which combines the ridge logistic a...
Multicollinearity negatively affects the efficiency of the maximum likelihood estimator (MLE) in bot...
The purpose of this paper is to solve the problem of multicollinearity that affects the estimation o...
The parameter estimation method that based on the minimum residual sum of squares is unsatisfactory ...
The logistic regression model is used when the response variables are dichotomous. In the presence o...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
Whenever there is a relationship between the explanatory variables (X_S). This relationship causes m...
<p>Logistic regression is a workhorse of statistics and is closely related to methods used in Machin...
Multicollinearity in logistic regression affects the variance of the maximum likelihood estimator ne...
<p>In logistic regression with nonignorable missing responses, Ibrahim and Lipsitz proposed a method...
© 2017, Springer-Verlag Berlin Heidelberg. In this paper, we deal with parameter estimation of the l...
Logistic Regression, being both a predictive and an explanatory method, is one of the most commonly ...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
In this paper, the (Formula presented.) class logistic estimator which combines the ridge logistic a...
Multicollinearity negatively affects the efficiency of the maximum likelihood estimator (MLE) in bot...
The purpose of this paper is to solve the problem of multicollinearity that affects the estimation o...
The parameter estimation method that based on the minimum residual sum of squares is unsatisfactory ...
The logistic regression model is used when the response variables are dichotomous. In the presence o...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...
Typically, small samples have always been a problem for binomial generalized linear models. Though g...
Whenever there is a relationship between the explanatory variables (X_S). This relationship causes m...
<p>Logistic regression is a workhorse of statistics and is closely related to methods used in Machin...
Multicollinearity in logistic regression affects the variance of the maximum likelihood estimator ne...
<p>In logistic regression with nonignorable missing responses, Ibrahim and Lipsitz proposed a method...
© 2017, Springer-Verlag Berlin Heidelberg. In this paper, we deal with parameter estimation of the l...
Logistic Regression, being both a predictive and an explanatory method, is one of the most commonly ...