In the presence of multicollinearity, the r - k class estimator is proposed as an alternative to the ordinary least squares (OLS) estimator which is a general estimator including the ordinary ridge regression (ORR), the principal components regression (PCR) and the OLS estimators. Comparison of competing estimators of a parameter in the sense of mean square error (MSE) criterion is of central interest. An alternative criterion to the MSE criterion is the Pitman's (1937) closeness (PC) criterion. In this paper, we compare the r - k class estimator to the OLS estimator in terms of PC criterion so that we can get the comparison of the ORR estimator to the OLS estimator under the PC criterion which was done by Mason et al. (1990) and also the c...
Multiple linear regression models are frequently used in predicting unknown values of the response v...
Pitman's measure of closeness, closest estimator, Stein-type estimator, Brown-type estimator, equiva...
In this paper, we study the performance of estimators of parametersof two-parameter exponential dist...
WOS: 000255116000007In the presence of multicollinearity, the r - k class estimator is proposed as a...
Batah et al. (2009) combined the unbiased ridge estimator and principal components regression estima...
In regression analysis, to overcome the problem of multicollinearity, the r-k class estimator is pro...
WOS: 000305514300014In regression analysis, to overcome the problem of multicollinearity, the r - k ...
WOS: 000243795800012Kaciranlar, and Sakalhoglu, [2001. Combining the Liu estimator and the principal...
Kaçi{dotless}ranlar, and Sakalli{dotless}oglu, [2001. Combining the Liu estimator and the principal ...
The purpose of this paper is to combine several regression estimators (ordinary least squares (OLS),...
In this paper we introduce a class of estimators which includes the ordinary least squares (OLS), th...
In this article, we introduce the modified r-k class estimator and the restricted r-k class estimato...
In the case of ill-conditioned design matrix in linear regression model, the r - (k, d) class estim...
Autocorrelation in errors and multicollinearity among the regressors are serious problems in regress...
Omission of some relevant explanatory variables and multicollinearity in regression models are very ...
Multiple linear regression models are frequently used in predicting unknown values of the response v...
Pitman's measure of closeness, closest estimator, Stein-type estimator, Brown-type estimator, equiva...
In this paper, we study the performance of estimators of parametersof two-parameter exponential dist...
WOS: 000255116000007In the presence of multicollinearity, the r - k class estimator is proposed as a...
Batah et al. (2009) combined the unbiased ridge estimator and principal components regression estima...
In regression analysis, to overcome the problem of multicollinearity, the r-k class estimator is pro...
WOS: 000305514300014In regression analysis, to overcome the problem of multicollinearity, the r - k ...
WOS: 000243795800012Kaciranlar, and Sakalhoglu, [2001. Combining the Liu estimator and the principal...
Kaçi{dotless}ranlar, and Sakalli{dotless}oglu, [2001. Combining the Liu estimator and the principal ...
The purpose of this paper is to combine several regression estimators (ordinary least squares (OLS),...
In this paper we introduce a class of estimators which includes the ordinary least squares (OLS), th...
In this article, we introduce the modified r-k class estimator and the restricted r-k class estimato...
In the case of ill-conditioned design matrix in linear regression model, the r - (k, d) class estim...
Autocorrelation in errors and multicollinearity among the regressors are serious problems in regress...
Omission of some relevant explanatory variables and multicollinearity in regression models are very ...
Multiple linear regression models are frequently used in predicting unknown values of the response v...
Pitman's measure of closeness, closest estimator, Stein-type estimator, Brown-type estimator, equiva...
In this paper, we study the performance of estimators of parametersof two-parameter exponential dist...