In this study, we proposed an alternative biased estimator. The linear regression model might lead to ill-conditioned design matrices because of the multicollinearity and thus result in inadequacy of the ordinary least squares estimator (OLS). Scientists have developed alternative estimation techniques that would eradicate the instability in the estimates. Several biased estimators such as Stein estimator, the ordinary ridge regression (ORR) estimator, the principal components regression (PCR) estimator. Liu developed a Liu estimator (LE) by combining the Stein estimator with the ORR estimator. Since both ORR and LE depend on OLS estimator, multicollinearity affects them both. Therefore, the ORR and LE may give misleading information in the...
Background: In the linear regression model, the ordinary least square (OLS) estimator performance dr...
This paper analyses the properties of jackknife estimators of the first-order autoregressive coeffic...
One of the most important methods in statistics for estimating parameters is there sampling method. ...
In 2003, Liu proposed a new estimator dealing with the problem of multicollinearity in linear regre...
The methods to solve the problem of multicollinearity have an important issue in the linear regressi...
Singh et al. (1986) proposed an almost unbiased ridge estimator using Jackknife method that require...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
Ordinary Least Squares (OLS) estimator become worse in the presence of multicollinearity and outlier...
Several remediation measures have been developed to circumvent the problem of collinearity in Genera...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
A new biased estimator obtained by combining the Principal Component Regression Estimator and the sp...
Multiple linear regression model plays a key role in statistical inference and it has extensive appl...
In multiple linear regression analysis, multicollinearity and outliers are two main problems. When m...
Motivated by the ridge regression (Hoerl and Kennard, 1970) and Liu (1993) estimators, this paper pr...
Background: In the linear regression model, the ordinary least square (OLS) estimator performance dr...
This paper analyses the properties of jackknife estimators of the first-order autoregressive coeffic...
One of the most important methods in statistics for estimating parameters is there sampling method. ...
In 2003, Liu proposed a new estimator dealing with the problem of multicollinearity in linear regre...
The methods to solve the problem of multicollinearity have an important issue in the linear regressi...
Singh et al. (1986) proposed an almost unbiased ridge estimator using Jackknife method that require...
Quenouille has developed a procedure, later termed the jackknife by Tukey, for reducing the bias of ...
Ordinary Least Squares (OLS) estimator become worse in the presence of multicollinearity and outlier...
Several remediation measures have been developed to circumvent the problem of collinearity in Genera...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
This paper is concerned with the application of jackknife methods as a means of bias reduction in th...
A new biased estimator obtained by combining the Principal Component Regression Estimator and the sp...
Multiple linear regression model plays a key role in statistical inference and it has extensive appl...
In multiple linear regression analysis, multicollinearity and outliers are two main problems. When m...
Motivated by the ridge regression (Hoerl and Kennard, 1970) and Liu (1993) estimators, this paper pr...
Background: In the linear regression model, the ordinary least square (OLS) estimator performance dr...
This paper analyses the properties of jackknife estimators of the first-order autoregressive coeffic...
One of the most important methods in statistics for estimating parameters is there sampling method. ...