In this paper, we develop moment-based tests for parametric discrete distributions. Momentbased test techniques are attractive as they provide easy-to-implement test statistics. We propose a general transformation that makes the moments of interest insensitive to the parameter estimation uncertainty. This transformation is valid for some extended families of non-differentiable moments that are of great interest in the case of discrete distributions. Considering the power function under local alternatives, we compare this strategy with the one in which parameter uncertainty is corrected. The special example of backtesting of valueat- risk (VaR) forecasts is treated in detail, and we provide simple moments that have good size and power proper...
Procedures based on the Generalized Method of Moments (GMM) are basic tools in modern econometrics. ...
This article addresses statistical inference in models defined by conditional moment restrictions. O...
This paper develops methods of inference for nonparametric and semiparametric parameters defined by c...
In this paper, we develop moment-based tests for parametric discrete distributions. Momentbased test...
In this paper, we develop moment-based tests for parametric discrete distributions. We characterize ...
This paper considers moment-based tests applied to estimated quantities. We propose a general class ...
International audienceThis paper considers moment-based tests applied to estimated quantities. We pr...
We consider testing distributional assumptions by using moment conditions. A general class of moment...
We propose two classes of consistent tests in parametric econometric models defined through multiple...
We propose two classes of consistent tests in parametric econometric models defined through multiple...
We propose a new type of risk measure for non-negative random variables that focuses on the tail of ...
In this paper, we consider testing distributional assumptions. Special cases that we consider are th...
This is the publisher's version, also available electronically from http://journals.cambridge.org/ac...
This article proposes testing the hypothesis of a uniformly non-positive nonparametric regression fu...
This paper proposes a simple, fast and direct nonparametric test to verify if a sample is drawn from...
Procedures based on the Generalized Method of Moments (GMM) are basic tools in modern econometrics. ...
This article addresses statistical inference in models defined by conditional moment restrictions. O...
This paper develops methods of inference for nonparametric and semiparametric parameters defined by c...
In this paper, we develop moment-based tests for parametric discrete distributions. Momentbased test...
In this paper, we develop moment-based tests for parametric discrete distributions. We characterize ...
This paper considers moment-based tests applied to estimated quantities. We propose a general class ...
International audienceThis paper considers moment-based tests applied to estimated quantities. We pr...
We consider testing distributional assumptions by using moment conditions. A general class of moment...
We propose two classes of consistent tests in parametric econometric models defined through multiple...
We propose two classes of consistent tests in parametric econometric models defined through multiple...
We propose a new type of risk measure for non-negative random variables that focuses on the tail of ...
In this paper, we consider testing distributional assumptions. Special cases that we consider are th...
This is the publisher's version, also available electronically from http://journals.cambridge.org/ac...
This article proposes testing the hypothesis of a uniformly non-positive nonparametric regression fu...
This paper proposes a simple, fast and direct nonparametric test to verify if a sample is drawn from...
Procedures based on the Generalized Method of Moments (GMM) are basic tools in modern econometrics. ...
This article addresses statistical inference in models defined by conditional moment restrictions. O...
This paper develops methods of inference for nonparametric and semiparametric parameters defined by c...