In this paper, we derive some lower bounds of the Cramer-Rao type for the covariance matrix of any unbiased estimator of the pseudo-true parameters in a parametric model that may be misspecified. We obtain some lower bounds when the true distribution belongs either to a parametric model that may differ from the specified parametric model or to the class of all distributions with respect to which the model is regular. As an illustration, we apply our results to the normal linear regression model. In particular, we extend the Gauss-Markov Theorem by showing that the OLS estimator has minimum variance in the entire class of unbiased estimators of the pseudo-true parameters when the mean and the distribution of the errors are both misspe...
Misspecification of the short memory dynamics in a long memory model has serious repercussions for t...
More than thirty years ago Halbert White inaugurated a “modelrobust” form of statistical inference b...
This paper focuses on the application of recent results on lower bounds under misspecified models to...
In this paper, we derive some lower bounds of the Cramer-Rao type for the covariance matrix of any ...
<div><p>Following the work by Eicker, Huber, and White it is common in empirical work to report stan...
We prove that the posterior distribution of a parameter in misspecified LAN parametric models can be...
In most parametric estimation problems there exists a trade-off between bias and variance of the est...
We propose a specification test for a wide range of parametric models for conditional distribution ...
Since image reconstruction and restoration are ill-posed problems, unbiased estimators often have un...
We study a Bayesian model where we have made specific requests about the parameter values to be esti...
We study a special class of misspecified generalized linear models, where the true model is a mixed ...
Standard tests and confidence sets in the moment inequality literature are not robust to model misspe...
In the parametric estimation context, estimators performances can be characterized, inter alia, by t...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
Abstract—An important aspect of estimation theory is char-acterizing the best achievable performance...
Misspecification of the short memory dynamics in a long memory model has serious repercussions for t...
More than thirty years ago Halbert White inaugurated a “modelrobust” form of statistical inference b...
This paper focuses on the application of recent results on lower bounds under misspecified models to...
In this paper, we derive some lower bounds of the Cramer-Rao type for the covariance matrix of any ...
<div><p>Following the work by Eicker, Huber, and White it is common in empirical work to report stan...
We prove that the posterior distribution of a parameter in misspecified LAN parametric models can be...
In most parametric estimation problems there exists a trade-off between bias and variance of the est...
We propose a specification test for a wide range of parametric models for conditional distribution ...
Since image reconstruction and restoration are ill-posed problems, unbiased estimators often have un...
We study a Bayesian model where we have made specific requests about the parameter values to be esti...
We study a special class of misspecified generalized linear models, where the true model is a mixed ...
Standard tests and confidence sets in the moment inequality literature are not robust to model misspe...
In the parametric estimation context, estimators performances can be characterized, inter alia, by t...
The field of Robust Statistics deals with the problem of stability of estimators under a certain typ...
Abstract—An important aspect of estimation theory is char-acterizing the best achievable performance...
Misspecification of the short memory dynamics in a long memory model has serious repercussions for t...
More than thirty years ago Halbert White inaugurated a “modelrobust” form of statistical inference b...
This paper focuses on the application of recent results on lower bounds under misspecified models to...