The regression model estimator is considered efficient if it is robust and resistant to the presence of heteroscedasticity variance, multicollinearity or unusual observations called outliers. However, in regard to these problems, the wild bootstrap and robust wild bootstrap are no longer efficient since they could not produce the smallest variance. Hence this research investigates the use of robust PC with wild bootstrap techniques on regression model as an estimator for real and simulation data in a situation where multicollinearity, heteroscedasticity and multiple outliers are present. This paper proposed a robust procedure based on the weighted residuals which combined the Tukey bisquare weighted function, principal component analysis (P...
Problem statement: Bootstrap approach had introduced new advancement in modeling and model evaluatio...
The Ordinary Least Squares (OLS) method is the most popular technique in statistics and is often use...
This study presents an improvement to robust ridge regression estimator. We proposed two methods Bis...
The regression model estimator is considered efficient if it is robust and resistant to the presence...
Bootstrap techniques are widely used today in many other fields such as economics, Business Administ...
Nowadays bootstrap techniques are used for data analysis in many other fields like engineering, phys...
Evaluation of regression model is very much influenced by the choice of accurate estimation method s...
This paper investigates the use of robust wild bootstrap techniques on regression model as an estima...
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
The violation of the assumption of homoscedasticity in OLS method, usually called heteroscedasticity...
The applications of bootstrap methods in regression analysis have drawn much attention to the statis...
This paper uses the wild bootstrap technique in the estimation of a heteroscedastic partially linear...
The Ordinary Least Squares (OLS) method is often used to estimate the parameters of a linear model. ...
International audienceRecent results of Cribari-Neto and Zarkos (1999) show that bootstrap methods c...
The wild bootstrap is studied in the context of regression models with heteroskedastic disturbances....
Problem statement: Bootstrap approach had introduced new advancement in modeling and model evaluatio...
The Ordinary Least Squares (OLS) method is the most popular technique in statistics and is often use...
This study presents an improvement to robust ridge regression estimator. We proposed two methods Bis...
The regression model estimator is considered efficient if it is robust and resistant to the presence...
Bootstrap techniques are widely used today in many other fields such as economics, Business Administ...
Nowadays bootstrap techniques are used for data analysis in many other fields like engineering, phys...
Evaluation of regression model is very much influenced by the choice of accurate estimation method s...
This paper investigates the use of robust wild bootstrap techniques on regression model as an estima...
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
The violation of the assumption of homoscedasticity in OLS method, usually called heteroscedasticity...
The applications of bootstrap methods in regression analysis have drawn much attention to the statis...
This paper uses the wild bootstrap technique in the estimation of a heteroscedastic partially linear...
The Ordinary Least Squares (OLS) method is often used to estimate the parameters of a linear model. ...
International audienceRecent results of Cribari-Neto and Zarkos (1999) show that bootstrap methods c...
The wild bootstrap is studied in the context of regression models with heteroskedastic disturbances....
Problem statement: Bootstrap approach had introduced new advancement in modeling and model evaluatio...
The Ordinary Least Squares (OLS) method is the most popular technique in statistics and is often use...
This study presents an improvement to robust ridge regression estimator. We proposed two methods Bis...