This article is concerned with the performance of logistic ridge regression estimation technique in the presence of multicollinearity and high leverage points. In logistic regression, multicollinearity exists among predictors and in the information matrix. The maximum likelihood estimator suffers a huge setback in the presence of multicollinearity which cause regression estimates to have unduly large standard errors. To remedy this problem, a logistic ridge regression estimator is put forward. It is evident that the logistic ridge regression estimator outperforms the maximum likelihood approach for handling multicollinearity. The effect of high leverage points are then investigated on the performance of the logistic ridge regression estimat...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
Multicollinearity negatively affects the efficiency of the maximum likelihood estimator (MLE) in bot...
The performances of two biased estimators for the general linear regression model under conditions o...
Leverage points are those which measures uncommon observations in x space of regression diagnostics....
This article is concerned with the performance of the maximum estimated likelihood estimator in the ...
High leverage points are observations that have outlying values in covariate space. In logistic regr...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
The purpose of this research is to investigate the performance of some ridge regression estimators f...
The parameter estimation method that based on the minimum residual sum of squares is unsatisfactory ...
The binary logistic regression model popularly used in medical data analysis. In spite of its popul...
Outliers with respect to the predictor variables are called high leverage points. The observations t...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...
Outliers in the X-direction or high leverage points are the latest known source of multicollinearity...
In this paper we review some existing and propose some new estimators for estimating the ridge param...
Problem statement: The Least Squares (LS) method has been the most popular technique for estimating ...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
Multicollinearity negatively affects the efficiency of the maximum likelihood estimator (MLE) in bot...
The performances of two biased estimators for the general linear regression model under conditions o...
Leverage points are those which measures uncommon observations in x space of regression diagnostics....
This article is concerned with the performance of the maximum estimated likelihood estimator in the ...
High leverage points are observations that have outlying values in covariate space. In logistic regr...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
The purpose of this research is to investigate the performance of some ridge regression estimators f...
The parameter estimation method that based on the minimum residual sum of squares is unsatisfactory ...
The binary logistic regression model popularly used in medical data analysis. In spite of its popul...
Outliers with respect to the predictor variables are called high leverage points. The observations t...
The ridge regression model has been consistently demonstrated to be an attractive shrinkage method t...
Outliers in the X-direction or high leverage points are the latest known source of multicollinearity...
In this paper we review some existing and propose some new estimators for estimating the ridge param...
Problem statement: The Least Squares (LS) method has been the most popular technique for estimating ...
One of the main goals of the multiple linear regression model, Y = Xβ + u, is to assess the importan...
Multicollinearity negatively affects the efficiency of the maximum likelihood estimator (MLE) in bot...
The performances of two biased estimators for the general linear regression model under conditions o...