Multiple linear regression model plays a key role in statistical inference and it has extensive applications in business, environmental, physical and social sciences. Multicollinearity has been a considerable problem in multiple regression analysis. When the regressor variables are multicollinear, it becomes difficult to make precise statistical inferences about the regression coefficients. There are some statistical methods that can be used, which are discussed in this thesis are ridge regression, Liu, two parameter biased and LASSO estimators. Firstly, an analytical comparison on the basis of risk was made among ridge, Liu and LASSO estimators under orthonormal regression model. I found that LASSO dominates least squares, ridge and Liu es...
In 2003, Liu proposed a new estimator dealing with the problem of multicollinearity in linear regre...
The problem of estimation of the regression coefficients under multicollinearity situation for the r...
Ridge estimator in linear regression model requires a ridge parameter, K, of which many have been pr...
Multiple linear regression model plays a key role in statistical inference and it has extensive appl...
In multiple linear regression analysis, the ridge and liu regression estimators are often used to so...
In multiple linear regression analysis, multicollinearity and outliers are two main problems. When m...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
Motivated by the ridge regression (Hoerl and Kennard, 1970) and Liu (1993) estimators, this paper pr...
The methods to solve the problem of multicollinearity have an important issue in the linear regressi...
Ridge estimator in linear regression model requires a ridge parameter, K, of which many have been pr...
During the past years, different kinds of estimators have been proposed as alternatives to the Ordin...
Two Stage Robust Ridge Estimators based on robust estimators M, MM, S, LTS are examined in the prese...
The ridge estimator for handling multicollinearity problem in linear regression model requires the ...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
The estimation of ridge parameter is an important problem in the ridge regression method, which is w...
In 2003, Liu proposed a new estimator dealing with the problem of multicollinearity in linear regre...
The problem of estimation of the regression coefficients under multicollinearity situation for the r...
Ridge estimator in linear regression model requires a ridge parameter, K, of which many have been pr...
Multiple linear regression model plays a key role in statistical inference and it has extensive appl...
In multiple linear regression analysis, the ridge and liu regression estimators are often used to so...
In multiple linear regression analysis, multicollinearity and outliers are two main problems. When m...
Ridge regression, a form of biased linear estimation, is a more appropriate technique than ordinary ...
Motivated by the ridge regression (Hoerl and Kennard, 1970) and Liu (1993) estimators, this paper pr...
The methods to solve the problem of multicollinearity have an important issue in the linear regressi...
Ridge estimator in linear regression model requires a ridge parameter, K, of which many have been pr...
During the past years, different kinds of estimators have been proposed as alternatives to the Ordin...
Two Stage Robust Ridge Estimators based on robust estimators M, MM, S, LTS are examined in the prese...
The ridge estimator for handling multicollinearity problem in linear regression model requires the ...
Multicollinearity problem in logistic regression causes an inflation in the variance of the Maximum ...
The estimation of ridge parameter is an important problem in the ridge regression method, which is w...
In 2003, Liu proposed a new estimator dealing with the problem of multicollinearity in linear regre...
The problem of estimation of the regression coefficients under multicollinearity situation for the r...
Ridge estimator in linear regression model requires a ridge parameter, K, of which many have been pr...