Motivated by the ridge regression (Hoerl and Kennard, 1970) and Liu (1993) estimators, this paper proposes a modified Liu estimator to solve the multicollinearity problem for the linear regression model. This modification places this estimator in the class of the ridge and Liu estimators with a single biasing parameter. Theoretical comparisons, real-life application, and simulation results show that it consistently dominates the usual Liu estimator. Under some conditions, it performs better than the ridge regression estimators in the smaller MSE sense. Two real-life data are analyzed to illustrate the findings of the paper and the performances of the estimators assessed by MSE and the mean squared prediction error. The application result ag...
We propose the Liu estimator and the Liu predictor via the penalized log-likelihood approach in line...
This paper introduces a new biased estimator, namely, almost unbiased Liu estimator (AULE) of β...
The general linear regression model has been one of the most frequently used models over the years, ...
The ridge regression-type (Hoerl and Kennard, 1970) and Liu-type (Liu, 1993) estimators are consiste...
In this paper, we introduce the new biased estimator to deal with the problem of multicollinearity. ...
The methods to solve the problem of multicollinearity have an important issue in the linear regressi...
The methods to solve the problem of multicollinearity have an important issue in the linear regressi...
Two-stage least squares estimation in a simultaneous equations model has several desirable propertie...
Consider the regression model y = ß01 + Xß + ?. Recently, the Liu estimator, which is an alternative...
Consider the regression model y = beta 0 1 + Xbeta + epsilon. Recently, the Liu estimator, which is ...
The inefficiency of the ordinary least square estimator for the parameter estimation of a linear reg...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
In this paper we consider the semiparametric regression model, y=Xß+f+?. Recently, Hu [11] proposed ...
Multiple linear regression models are frequently used in predicting (forecasting) unknown values of ...
Multicollinearity among the explanatory variables seriously effects the maximum likelihood estimator...
We propose the Liu estimator and the Liu predictor via the penalized log-likelihood approach in line...
This paper introduces a new biased estimator, namely, almost unbiased Liu estimator (AULE) of β...
The general linear regression model has been one of the most frequently used models over the years, ...
The ridge regression-type (Hoerl and Kennard, 1970) and Liu-type (Liu, 1993) estimators are consiste...
In this paper, we introduce the new biased estimator to deal with the problem of multicollinearity. ...
The methods to solve the problem of multicollinearity have an important issue in the linear regressi...
The methods to solve the problem of multicollinearity have an important issue in the linear regressi...
Two-stage least squares estimation in a simultaneous equations model has several desirable propertie...
Consider the regression model y = ß01 + Xß + ?. Recently, the Liu estimator, which is an alternative...
Consider the regression model y = beta 0 1 + Xbeta + epsilon. Recently, the Liu estimator, which is ...
The inefficiency of the ordinary least square estimator for the parameter estimation of a linear reg...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
In this paper we consider the semiparametric regression model, y=Xß+f+?. Recently, Hu [11] proposed ...
Multiple linear regression models are frequently used in predicting (forecasting) unknown values of ...
Multicollinearity among the explanatory variables seriously effects the maximum likelihood estimator...
We propose the Liu estimator and the Liu predictor via the penalized log-likelihood approach in line...
This paper introduces a new biased estimator, namely, almost unbiased Liu estimator (AULE) of β...
The general linear regression model has been one of the most frequently used models over the years, ...