This paper considers moment-based tests applied to estimated quantities. We propose a general class of transforms of moments to handle the parameter uncertainty problem. The construction requires only a linear correction that can be implemented in-sample and remains valid for some extended families of non-smooth moments. We reemphasize the attractiveness of working with robust moments, which lead to testing procedures that do not depend on the estimator. Furthermore, no correction is needed when considering the implied test statistic in the out-of-sample case. We apply our methodology to various examples with an emphasis on the backtesting of value-at-risk forecasts
This paper presents optimal tests for violations of the moment conditions in the GMM framework. New ...
This is the publisher's version, also available electronically from http://journals.cambridge.org/ac...
The purpose of this article is to introduce a general moment-based approach to derive formal goodnes...
International audienceThis paper considers moment-based tests applied to estimated quantities. We pr...
This paper considers moment-based tests applied to estimated quantities. We propose a general class ...
In this paper, we develop moment-based tests for parametric discrete distributions. Momentbased test...
In this paper, we consider testing distributional assumptions. Special cases that we consider are th...
We consider testing distributional assumptions by using moment conditions. A general class of moment...
In this paper, we develop moment-based tests for parametric discrete distributions. We characterize ...
Berry for numerous discussions and comments. The authors also thank the co-editor, three referees, a...
Procedures based on the Generalized Method of Moments (GMM) are basic tools in modern econometrics. ...
The use of a stochastic model to predict the likelihood of future outcomes forms an integral part of...
This paper considers the problem of testing a finite number of moment inequalities. We propose a two...
This article addresses statistical inference in models defined by conditional moment restrictions. O...
The topic of this paper is inference in models in which parameters are defined by moment inequalitie...
This paper presents optimal tests for violations of the moment conditions in the GMM framework. New ...
This is the publisher's version, also available electronically from http://journals.cambridge.org/ac...
The purpose of this article is to introduce a general moment-based approach to derive formal goodnes...
International audienceThis paper considers moment-based tests applied to estimated quantities. We pr...
This paper considers moment-based tests applied to estimated quantities. We propose a general class ...
In this paper, we develop moment-based tests for parametric discrete distributions. Momentbased test...
In this paper, we consider testing distributional assumptions. Special cases that we consider are th...
We consider testing distributional assumptions by using moment conditions. A general class of moment...
In this paper, we develop moment-based tests for parametric discrete distributions. We characterize ...
Berry for numerous discussions and comments. The authors also thank the co-editor, three referees, a...
Procedures based on the Generalized Method of Moments (GMM) are basic tools in modern econometrics. ...
The use of a stochastic model to predict the likelihood of future outcomes forms an integral part of...
This paper considers the problem of testing a finite number of moment inequalities. We propose a two...
This article addresses statistical inference in models defined by conditional moment restrictions. O...
The topic of this paper is inference in models in which parameters are defined by moment inequalitie...
This paper presents optimal tests for violations of the moment conditions in the GMM framework. New ...
This is the publisher's version, also available electronically from http://journals.cambridge.org/ac...
The purpose of this article is to introduce a general moment-based approach to derive formal goodnes...