This paper studies the asymptotic behavior of a Gaussian linear instrumental variables model in which the number of instruments diverges with the sample size. Asymptotic efficiency bounds are obtained for rotation invariant inference procedures and are shown to be attainable by procedures based on the limited infor-mation maximum likelihood estimator. The bounds are obtained by characterizing the limiting experiment associated with the model induced by the rotation invariance restriction. 1
This paper gives a relatively simple, well behaved solution to the problem of many instruments in he...
<p>This paper investigates Bayesian instrumental variable models with many instruments. The number o...
This paper considers asymptotically efficient instrumental variables estimation of nonlinear models ...
This paper proposes novel inference procedures for instrumental variable models in the presence of m...
Comments welcome This paper focuses on the efficient estimation of a finite dimensional parameter in...
The paper derives asymptotic efficiency bounds for estimators of a single linear relation, based on ...
The first chapter of this dissertation considers a new class of robust estimators in a linear instru...
This paper focuses on the estimation of a \u85nite dimensional parameter in a linear model where the...
This paper introduces a general, formal treatment of dynamic constraints, i.e., constraints on the s...
We consider the estimation of the coefficients of a linear structural equation in a simultaneous equ...
We consider the estimation of the coefficients of a linear structural equation in a simultaneous equ...
In this paper, we show that for panel AR(p) models, an instrumental variable (IV) estimator with ins...
In this paper, we show that for panel AR( p) models, an instrumental variable (IV) estimator with in...
This paper studies the asymptotic validity of the Anderson–Rubin (AR) test and the J test for overid...
This paper studies the asymptotic validity of the AndersonRubin (AR) test and the J test for overide...
This paper gives a relatively simple, well behaved solution to the problem of many instruments in he...
<p>This paper investigates Bayesian instrumental variable models with many instruments. The number o...
This paper considers asymptotically efficient instrumental variables estimation of nonlinear models ...
This paper proposes novel inference procedures for instrumental variable models in the presence of m...
Comments welcome This paper focuses on the efficient estimation of a finite dimensional parameter in...
The paper derives asymptotic efficiency bounds for estimators of a single linear relation, based on ...
The first chapter of this dissertation considers a new class of robust estimators in a linear instru...
This paper focuses on the estimation of a \u85nite dimensional parameter in a linear model where the...
This paper introduces a general, formal treatment of dynamic constraints, i.e., constraints on the s...
We consider the estimation of the coefficients of a linear structural equation in a simultaneous equ...
We consider the estimation of the coefficients of a linear structural equation in a simultaneous equ...
In this paper, we show that for panel AR(p) models, an instrumental variable (IV) estimator with ins...
In this paper, we show that for panel AR( p) models, an instrumental variable (IV) estimator with in...
This paper studies the asymptotic validity of the Anderson–Rubin (AR) test and the J test for overid...
This paper studies the asymptotic validity of the AndersonRubin (AR) test and the J test for overide...
This paper gives a relatively simple, well behaved solution to the problem of many instruments in he...
<p>This paper investigates Bayesian instrumental variable models with many instruments. The number o...
This paper considers asymptotically efficient instrumental variables estimation of nonlinear models ...