The Ordinary Least Squares (OLS) method is the most popular technique in statistics and is often use to estimate the parameters of a model because of tradition and ease of computation. The OLS provides an efficient and unbiased estimates of the parameters when the underlying assumptions, especially the assumption of contant error variances (homoscedasticity), are satisfied. Nonetheless, in real situation it is difficult to retain the error variance homogeneous for many practical reasons and thus there arises the problem of heteroscedasticity. We generally apply the Weighted Least Squares (WLS) procedure to estimate the regression parameters when heteroscedasticity occurs in the data. Nevertheless, there is evidence that the WLS estima...
The ordinary least squares regression can be misleading when there are outliers, heteroscedasticity ...
It is straightforward that breaking the orthogonality condition implies biased and inconsistent esti...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
The ordinary least squares (OLS) procedure is inefficient when the underlying assumption of constant...
In a linear regression model, the ordinary least squares (OLS) method is considered the best method ...
The linear regression model requires robust estimation of parameters, if the measured data are conta...
The assumption of equal error variances (homoscedasticity) is one of the important assumptions for L...
We study the effect of heteroscedastic errors on different robust regression methods. Firstly we der...
The violation of the assumption of homoscedasticity in OLS method, usually called heteroscedasticity...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
In this study, Leverage Based Near Neighbour–Robust Weighted Least Squares (LBNN-RWLS) method is pro...
The Ordinary Least Squares (OLS) method has been the most popular technique for estimating the param...
In the present work, we evaluate the performance of the classical parametric estimation method "ordi...
Master of ScienceDepartment of StatisticsWeixin YaoIn practice, when applying a statistical method i...
The ordinary least squares regression can be misleading when there are outliers, heteroscedasticity ...
It is straightforward that breaking the orthogonality condition implies biased and inconsistent esti...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...
The ordinary least squares (OLS) procedure is inefficient when the underlying assumption of constant...
In a linear regression model, the ordinary least squares (OLS) method is considered the best method ...
The linear regression model requires robust estimation of parameters, if the measured data are conta...
The assumption of equal error variances (homoscedasticity) is one of the important assumptions for L...
We study the effect of heteroscedastic errors on different robust regression methods. Firstly we der...
The violation of the assumption of homoscedasticity in OLS method, usually called heteroscedasticity...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
Heteroskedastic regression data are modelled using a parameterized variance function. This procedure...
In this study, Leverage Based Near Neighbour–Robust Weighted Least Squares (LBNN-RWLS) method is pro...
The Ordinary Least Squares (OLS) method has been the most popular technique for estimating the param...
In the present work, we evaluate the performance of the classical parametric estimation method "ordi...
Master of ScienceDepartment of StatisticsWeixin YaoIn practice, when applying a statistical method i...
The ordinary least squares regression can be misleading when there are outliers, heteroscedasticity ...
It is straightforward that breaking the orthogonality condition implies biased and inconsistent esti...
This study attempts to investigate the effect of outliers on estimation of parameters in regression ...