An asymptotic theory is developed for a weakly identified cointegrating regression model in which the regressor is a nonlinear transformation of an integrated process. Weak identification arises from the presence of a loading coefficient for the nonlinear function that may be close to zero. In that case, standard nonlinear cointegrating limit theory does not provide good approximations to the finite sample distributions of nonlinear least squares estimators, resulting in potentially misleading inference. A new local limit theory is developed that approximates the finite sample distributions of the estimators uniformly well irrespective of the strength of the identification. An important technical component of this theory involves new results show...
This paper explores nonparametric estimation, inference, and specification testing in a nonlinear co...
In this paper we consider an extension of the linear concept of co integration to a nonlinear contex...
Nonparametric estimation of a structural cointegrating regression model is studied. As in the standa...
An asymptotic theory is developed for a weakly identified cointegrating regression model in which the...
An asymptotic theory is developed for a weakly identified cointegrating regression model in which th...
This paper develops an asymptotic theory for nonlinear cointegrating power function regression. The ...
Linear cointegration is known to have the important property of invariance under temporal translatio...
We provide a limit theory for a general class of kernel smoothed U statistics that may be used for s...
We derive the asymptotic distribution of the ordinary least squares estimator in a regression with c...
In this paper, we develop a practical procedure to construct con\u85dence intervals (CIs) in a weakl...
In regressions involving integrable functions we examine the limit properties of IV estimators that ...
This paper studies the asymptotic properties of empirical nonparametric regressions that partially m...
This paper studies nonlinear cointegration models in which the structural coefficients may evolve smo...
We provide a new asymptotic theory for local time density estimation for a general class of function...
Limit theory involving stochastic integrals is now widespread in time series econometrics and relies...
This paper explores nonparametric estimation, inference, and specification testing in a nonlinear co...
In this paper we consider an extension of the linear concept of co integration to a nonlinear contex...
Nonparametric estimation of a structural cointegrating regression model is studied. As in the standa...
An asymptotic theory is developed for a weakly identified cointegrating regression model in which the...
An asymptotic theory is developed for a weakly identified cointegrating regression model in which th...
This paper develops an asymptotic theory for nonlinear cointegrating power function regression. The ...
Linear cointegration is known to have the important property of invariance under temporal translatio...
We provide a limit theory for a general class of kernel smoothed U statistics that may be used for s...
We derive the asymptotic distribution of the ordinary least squares estimator in a regression with c...
In this paper, we develop a practical procedure to construct con\u85dence intervals (CIs) in a weakl...
In regressions involving integrable functions we examine the limit properties of IV estimators that ...
This paper studies the asymptotic properties of empirical nonparametric regressions that partially m...
This paper studies nonlinear cointegration models in which the structural coefficients may evolve smo...
We provide a new asymptotic theory for local time density estimation for a general class of function...
Limit theory involving stochastic integrals is now widespread in time series econometrics and relies...
This paper explores nonparametric estimation, inference, and specification testing in a nonlinear co...
In this paper we consider an extension of the linear concept of co integration to a nonlinear contex...
Nonparametric estimation of a structural cointegrating regression model is studied. As in the standa...