This paper analyzes the properties of a class of estimators, tests, and confidence sets (CS’s) when the parameters are not identified in parts of the parameter space. Specifically, we consider estimator criterion functions that are sample averages and are smooth functions of a parameter theta. This includes log likelihood, quasi-log likelihood, and least squares criterion functions. We determine the asymptotic distributions of estimators under lack of identification and under weak, semi-strong, and strong identification. We determine the asymptotic size (in a uniform sense) of standard t and quasi-likelihood ratio (QLR) tests and CS’s. We provide methods of constructing QLR tests and CS’s that are robust to the strength of identification. The res...
This paper develops methods of inference for nonparametric and semiparametric parameters defined by c...
Nonlinear regression model with continuous time and weak dependent or long-range dependent stationar...
We provide a unified framework for analyzing bootstrapped extremum estimators of nonlinear dynamic m...
This paper analyzes the properties of a class of estimators, tests, and confidence sets (CS’s) when t...
We study a linear index binary response model with random coefficients BB allowed to be correlated w...
2010 Mathematics Subject Classification: 62F12, 62M05, 62M09, 62M10, 60G42.Let {Zn}n∈N be a real sto...
This paper determines the properties of standard generalized method of moments (GMM) estimators, tes...
We study a nonlinear measurement model where the response variable has a density belonging to the ex...
summary:Real valued $M$-estimators $\hat{\theta }_n:=\min \sum _1^n\rho (Y_i-\tau (\theta ))$ in a s...
論説Asymptotic expansions of the distributions of thirteen fit indexes used in covariance structure an...
This paper is concerned with the study of the rate of convergence of the distribution of the maximum...
This paper is an online supplementary appendix to "An Incidental Parameters Free Inference Approach ...
AbstractAsymptotic expansions of the distributions of the pivotal statistics involving log-likelihoo...
In this paper, we propose an instrumental variable approach to constructing confidence sets (CS’s) fo...
We give an asymptotic development of the maximum likelihood estimator (MLE), or any other estimator ...
This paper develops methods of inference for nonparametric and semiparametric parameters defined by c...
Nonlinear regression model with continuous time and weak dependent or long-range dependent stationar...
We provide a unified framework for analyzing bootstrapped extremum estimators of nonlinear dynamic m...
This paper analyzes the properties of a class of estimators, tests, and confidence sets (CS’s) when t...
We study a linear index binary response model with random coefficients BB allowed to be correlated w...
2010 Mathematics Subject Classification: 62F12, 62M05, 62M09, 62M10, 60G42.Let {Zn}n∈N be a real sto...
This paper determines the properties of standard generalized method of moments (GMM) estimators, tes...
We study a nonlinear measurement model where the response variable has a density belonging to the ex...
summary:Real valued $M$-estimators $\hat{\theta }_n:=\min \sum _1^n\rho (Y_i-\tau (\theta ))$ in a s...
論説Asymptotic expansions of the distributions of thirteen fit indexes used in covariance structure an...
This paper is concerned with the study of the rate of convergence of the distribution of the maximum...
This paper is an online supplementary appendix to "An Incidental Parameters Free Inference Approach ...
AbstractAsymptotic expansions of the distributions of the pivotal statistics involving log-likelihoo...
In this paper, we propose an instrumental variable approach to constructing confidence sets (CS’s) fo...
We give an asymptotic development of the maximum likelihood estimator (MLE), or any other estimator ...
This paper develops methods of inference for nonparametric and semiparametric parameters defined by c...
Nonlinear regression model with continuous time and weak dependent or long-range dependent stationar...
We provide a unified framework for analyzing bootstrapped extremum estimators of nonlinear dynamic m...