Selecting an estimator for the covariance matrix of a regression's parameter estimates is an important step in hypothesis testing. From less to more robust estimators, the choices available to researchers include Eicker/White heteroskedasticity-robust estimator, cluster-robust estimator, and multi-way cluster-robust estimator. The rationale for choosing a less robust covariance matrix estimator is that tests conducted using this estimator can have better power properties. This motivates tests that examine the appropriate level of robustness in covariance matrix estimation. In this paper, we propose a new robustness testing strategy, and show that it can dramatically improve inference about the proper level of robustness in covariance matrix...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
In this paper we propose a new variance estimator for OLS as well as for non-linear estimators such ...
In this presentation, I update Nichols and Schaffer's 2007 UK Stata Users Group talk on clustered st...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence...
We show that root-n-consistent heteroskedasticity-robust and cluster-robust regression estimators an...
AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence...
In the presence of heteroskedasticity of unknown form, the Ordinary Least Squares parameter estimato...
<p>In panel data models and other regressions with unobserved effects, fixed effects estimation is o...
This study develops cluster robust inference methods for panel quantile regression (QR) models with ...
This paper analyzes the problem of using the sample covariance matrix to detect the presence of clus...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
In this paper we propose a new variance estimator for OLS as well as for non-linear estimators such ...
In this presentation, I update Nichols and Schaffer's 2007 UK Stata Users Group talk on clustered st...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
This dissertation is composed of a study of estimation methods in classical and test theories and th...
AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence...
We show that root-n-consistent heteroskedasticity-robust and cluster-robust regression estimators an...
AbstractThis paper analyzes the problem of using the sample covariance matrix to detect the presence...
In the presence of heteroskedasticity of unknown form, the Ordinary Least Squares parameter estimato...
<p>In panel data models and other regressions with unobserved effects, fixed effects estimation is o...
This study develops cluster robust inference methods for panel quantile regression (QR) models with ...
This paper analyzes the problem of using the sample covariance matrix to detect the presence of clus...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
The Optimally Tuned Robust Improper Maximum Likelihood Estima- tor (OTRIMLE) for robust model-based ...
In this paper we propose a new variance estimator for OLS as well as for non-linear estimators such ...