This paper uses model symmetries in the instrumental variable (IV) regression to derive an invariant test for the causal structural parameter. Contrary to popular belief, we show that there exist model symmetries when equation errors are heteroskedastic and autocorrelated (HAC). Our theory is consistent with existing results for the homoskedastic model (Andrews, Moreira, and Stock (2006) and Chamberlain (2007)). We use these symmetries to propose the conditional integrated likelihood (CIL) test for the causality parameter in the over-identified model. Theoretical and numerical findings show that the CIL test performs well compared to other tests in terms of power and implementation. We recommend that practitioners use the Anderson-Rubin (AR...
In this paper we develop estimation techniques and a specification test for the validity of instrume...
We study subvector inference in the linear instrumental variables model assuming homoskedasticity bu...
International audienceThe covariance estimation of multivariate nonlinear processes is studied. The ...
This paper considers two-sided tests for the parameter of an endogenous variable in an instrumental ...
1This paper expands upon and supersedes the corresponding sections of our working pa- per \Contribut...
This paper considers tests of the parameter on an endogenous variable in an instru-mental variables ...
This paper considers tests of the parameter on endogenous variables in an instrumental variables reg...
We introduce a new test for a two-sided hypothesis involving a subset of the structural parameter ve...
Inference on the autocorrelation coefficient p of a linear regression model with first-order autoreg...
We introduce a new test for a two-sided hypothesis involving a subset of the struc tural parameter v...
Abstract. This paper studies a model widely used in the weak instru-ments literature and establishes...
We propose and evaluate a technique for instrumental variables estimation of linear models with cond...
This paper considers a linear panel data model with reduced rank regressors and interactive fixed ef...
We describe exact inference based on group-invariance assumptions that specify various forms of symm...
We study subvector inference in the linear instrumental variables model assuming homoskedasticity bu...
In this paper we develop estimation techniques and a specification test for the validity of instrume...
We study subvector inference in the linear instrumental variables model assuming homoskedasticity bu...
International audienceThe covariance estimation of multivariate nonlinear processes is studied. The ...
This paper considers two-sided tests for the parameter of an endogenous variable in an instrumental ...
1This paper expands upon and supersedes the corresponding sections of our working pa- per \Contribut...
This paper considers tests of the parameter on an endogenous variable in an instru-mental variables ...
This paper considers tests of the parameter on endogenous variables in an instrumental variables reg...
We introduce a new test for a two-sided hypothesis involving a subset of the structural parameter ve...
Inference on the autocorrelation coefficient p of a linear regression model with first-order autoreg...
We introduce a new test for a two-sided hypothesis involving a subset of the struc tural parameter v...
Abstract. This paper studies a model widely used in the weak instru-ments literature and establishes...
We propose and evaluate a technique for instrumental variables estimation of linear models with cond...
This paper considers a linear panel data model with reduced rank regressors and interactive fixed ef...
We describe exact inference based on group-invariance assumptions that specify various forms of symm...
We study subvector inference in the linear instrumental variables model assuming homoskedasticity bu...
In this paper we develop estimation techniques and a specification test for the validity of instrume...
We study subvector inference in the linear instrumental variables model assuming homoskedasticity bu...
International audienceThe covariance estimation of multivariate nonlinear processes is studied. The ...