These days, it is common practice to base inference about the coefficients in a hetoskedastic linear model on the ordinary least squares estimator in conjunction with using heteroskedasticity consistent standard errors. Even when the true form of heteroskedasticity is unknown, heteroskedasticity consistent standard errors can also used to base valid inference on a weighted least squares estimator and using such an estimator can provide large gains in efficiency over the ordinary least squares estimator. However, intervals based on asymptotic approximations with plug-in standard errors often have coverage that is below the nominal level, especially for small sample sizes. Similarly, tests can have null rejection probabilities that are above ...
In the presence of heteroscedasticity, OLS estimates are unbiased, but the usual tests of significan...
A simulation study is used to examine the robustness of some estimators on a linearized nonlinear re...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...
These days, it is common practice to base inference about the coefficients in a hetoskedastic linear...
In pursuit of efficiency, we propose a new way to construct least squares estimators, as the minimiz...
This paper shows how asymptotically valid inference in regression models based on the weighted least...
It is well-known that use of ordinary least squares for estimation of linear regression model with h...
The Ordinary Least Squares (OLS) method is the most popular technique in statistics and is often use...
The authors study a heteroscedastic partially linear regression model and develop an inferential pro...
International audienceIn the presence of heteroskedasticity of unknown form, the Ordinary Least Squa...
Since the advent of heteroskedasticity-robust standard errors, several papers have proposed adjustme...
The ordinary least squares (OLS) procedure is inefficient when the underlying assumption of constant...
This paper compares ordinary least squares (OLS), weighted least squares (WLS), and adaptive least s...
This paper proposes a new model averaging estimator for the linear regression model with heteroskeda...
Heteroscedastic consistent covariance matrix (HCCM) estimators provide ways for testing hypotheses a...
In the presence of heteroscedasticity, OLS estimates are unbiased, but the usual tests of significan...
A simulation study is used to examine the robustness of some estimators on a linearized nonlinear re...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...
These days, it is common practice to base inference about the coefficients in a hetoskedastic linear...
In pursuit of efficiency, we propose a new way to construct least squares estimators, as the minimiz...
This paper shows how asymptotically valid inference in regression models based on the weighted least...
It is well-known that use of ordinary least squares for estimation of linear regression model with h...
The Ordinary Least Squares (OLS) method is the most popular technique in statistics and is often use...
The authors study a heteroscedastic partially linear regression model and develop an inferential pro...
International audienceIn the presence of heteroskedasticity of unknown form, the Ordinary Least Squa...
Since the advent of heteroskedasticity-robust standard errors, several papers have proposed adjustme...
The ordinary least squares (OLS) procedure is inefficient when the underlying assumption of constant...
This paper compares ordinary least squares (OLS), weighted least squares (WLS), and adaptive least s...
This paper proposes a new model averaging estimator for the linear regression model with heteroskeda...
Heteroscedastic consistent covariance matrix (HCCM) estimators provide ways for testing hypotheses a...
In the presence of heteroscedasticity, OLS estimates are unbiased, but the usual tests of significan...
A simulation study is used to examine the robustness of some estimators on a linearized nonlinear re...
The paper is devoted to the least weighted squares estimator, which is one of highly robust estimato...