"Robust standard errors'" are used in a vast array of scholarship to correct standard errors for model misspecification. However, when misspecification is bad enough to make classical and robust standard errors diverge, assuming that it is nevertheless not so bad as to bias everything else requires considerable optimism. And even if the optimism is warranted, settling for a misspecified model, with or without robust standard errors, will still bias estimators of all but a few quantities of interest. Even though this message is well known to methodologists and has appeared in the literature in several forms, it has failed to reach most applied researchers. The resulting cavernous gap between theory and practice suggest...
In lieu of an abstract, here is the entry\u27s first paragraph: Robust statistics are procedures tha...
This article identifies a set of serious theoretical mistakes appearing with troublingly high freque...
The measurement and reporting of model error is of basic importance when constructing models. Here, ...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
All statistical estimates from data have uncertainty due to sampling variability. A standard error i...
In empirical research it is common practice to use sensible rules of thumb for cleaning data. Measur...
Robust Statistics deals with a pressing problem in statistical applications: many classical statisti...
We argue that robust statistics has multiple goals, which are not always aligned. Robust thinking gr...
Standard tests and confidence sets in the moment inequality literature are not robust to model misspe...
A regression estimator is said to be robust if it is still reliable in the presence of outliers. On ...
In statistics, samples are drawn from a population in a data-generating process (DGP). Standard erro...
A regression estimator is said to be robust if it is still reliable in the presence of outliers. On ...
More than thirty years ago Halbert White inaugurated a “modelrobust” form of statistical inference b...
The different robust estimators for the standard errors of panel models used in applied econometric ...
In lieu of an abstract, here is the entry\u27s first paragraph: Robust statistics are procedures tha...
This article identifies a set of serious theoretical mistakes appearing with troublingly high freque...
The measurement and reporting of model error is of basic importance when constructing models. Here, ...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
"Robust standard errors" are used in a vast array of scholarship to correct standard errors for mode...
All statistical estimates from data have uncertainty due to sampling variability. A standard error i...
In empirical research it is common practice to use sensible rules of thumb for cleaning data. Measur...
Robust Statistics deals with a pressing problem in statistical applications: many classical statisti...
We argue that robust statistics has multiple goals, which are not always aligned. Robust thinking gr...
Standard tests and confidence sets in the moment inequality literature are not robust to model misspe...
A regression estimator is said to be robust if it is still reliable in the presence of outliers. On ...
In statistics, samples are drawn from a population in a data-generating process (DGP). Standard erro...
A regression estimator is said to be robust if it is still reliable in the presence of outliers. On ...
More than thirty years ago Halbert White inaugurated a “modelrobust” form of statistical inference b...
The different robust estimators for the standard errors of panel models used in applied econometric ...
In lieu of an abstract, here is the entry\u27s first paragraph: Robust statistics are procedures tha...
This article identifies a set of serious theoretical mistakes appearing with troublingly high freque...
The measurement and reporting of model error is of basic importance when constructing models. Here, ...