We consider conditional moment models under semi-strong identification. Identification strength is directly defined through the conditional moments that flatten as the sample size increases. Our new minimum distance estimator is consistent, asymptotically normal, robust to semi-strong identification, and does not rely on the choice of a user-chosen parameter, such as the number of instruments or some smoothing parameter. Heteroskedasticity-robust inference is possible through Wald testing without prior knowledge of the identification pattern. Simulations show that our estimator is competitive with alternative estimators based on many instruments, being well-centered with better coverage rates for confidence intervals
International audienceTo study the influence of a bandwidth parameter in inference with conditional ...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
OnlinePublThis paper proposes a robust moment selection method aiming to pick the best model even if...
We consider conditional moment models under semi-strong identification. Identification strength is d...
We consider models defined by a set of conditional moment restrictions where weak identification may...
For a linear IV regression, we propose two new inference procedures on parameters of endogenous vari...
For a linear IV regression, we propose two new inference procedures on parameters of endogenous vari...
We propose a new class of estimators for models defined by conditional moment re-strictions. Our gen...
This paper introduces two new identi\u85cation- and singularity-robust (SR) conditional quasi-likeli...
Abstract We consider models defined by a set of moment restrictions that may be subject to weak iden...
The purpose of this paper is to describe the performance of generalized empirical likelihood (GEL) m...
We propose an estimation method for models of conditional moment restrictions, which contain finite ...
This paper determines the properties of standard generalized method of moments (GMM) estimators, tes...
This paper considers semiparametric efficient estimation of conditional moment models with possibly ...
This paper proposes an empirical likelihood-based estimation method for semiparametric conditional m...
International audienceTo study the influence of a bandwidth parameter in inference with conditional ...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
OnlinePublThis paper proposes a robust moment selection method aiming to pick the best model even if...
We consider conditional moment models under semi-strong identification. Identification strength is d...
We consider models defined by a set of conditional moment restrictions where weak identification may...
For a linear IV regression, we propose two new inference procedures on parameters of endogenous vari...
For a linear IV regression, we propose two new inference procedures on parameters of endogenous vari...
We propose a new class of estimators for models defined by conditional moment re-strictions. Our gen...
This paper introduces two new identi\u85cation- and singularity-robust (SR) conditional quasi-likeli...
Abstract We consider models defined by a set of moment restrictions that may be subject to weak iden...
The purpose of this paper is to describe the performance of generalized empirical likelihood (GEL) m...
We propose an estimation method for models of conditional moment restrictions, which contain finite ...
This paper determines the properties of standard generalized method of moments (GMM) estimators, tes...
This paper considers semiparametric efficient estimation of conditional moment models with possibly ...
This paper proposes an empirical likelihood-based estimation method for semiparametric conditional m...
International audienceTo study the influence of a bandwidth parameter in inference with conditional ...
This paper proposes an asymptotically efficient method for estimating models with conditional moment...
OnlinePublThis paper proposes a robust moment selection method aiming to pick the best model even if...