This paper studies estimation and specification testing in threshold regression with endogeneity. Three key results differ from those in regular models. First, both the threshold point and the threshold effect parameters are shown to be identified without the need for instrumentation. Second, in partially linear threshold models, both parametric and nonparametric components rely on the same data, which prima facie suggests identification failure. But, as shown here, the discontinuity structure of the threshold itself supplies identifying information for the parametric coefficients without the need for extra randomness in the regressors. Third, instrumentation plays different roles in the estimation of the system parameters, delivering identificatio...
Threshold models have a wide variety of applications in economics. Direct applications include model...
The empirical powers of recently proposed threshold cointegration tests are examined. Using an empir...
We provide a generalization of the Anderson-Rubin (AR) procedure for inference on parameters which r...
This paper studies estimation in threshold regression with endogeneity in the regressors and thresho...
We propose three new methods of inference for the threshold point in endogenous threshold regression...
This paper studies estimation in threshold regression with endogeneity in the regressors and thresho...
This paper develops new statistical inference methods for the parameters in threshold regression mod...
This paper extends the simple threshold regression framework of Hansen (2000) and Caner and Hansen (...
This paper studies the estimation and inferences in panel threshold regression with unobserved indiv...
We propose two new parametric tests for an unknown threshold in models with endogenous regressors. T...
This article shows the conditions under which endogeneity of a regressor variable does not affect th...
This paper considers the estimation of dynamic threshold regression models with fixed effects using ...
This paper addresses an important issue of modelling nonlinear asymmetric dynamics and unobserved in...
This paper extends the simple threshold regression framework of Hansen (2000) and Caner and Hansen (...
This paper addresses an important and challenging issue as how best to model nonlinear asymmetric dy...
Threshold models have a wide variety of applications in economics. Direct applications include model...
The empirical powers of recently proposed threshold cointegration tests are examined. Using an empir...
We provide a generalization of the Anderson-Rubin (AR) procedure for inference on parameters which r...
This paper studies estimation in threshold regression with endogeneity in the regressors and thresho...
We propose three new methods of inference for the threshold point in endogenous threshold regression...
This paper studies estimation in threshold regression with endogeneity in the regressors and thresho...
This paper develops new statistical inference methods for the parameters in threshold regression mod...
This paper extends the simple threshold regression framework of Hansen (2000) and Caner and Hansen (...
This paper studies the estimation and inferences in panel threshold regression with unobserved indiv...
We propose two new parametric tests for an unknown threshold in models with endogenous regressors. T...
This article shows the conditions under which endogeneity of a regressor variable does not affect th...
This paper considers the estimation of dynamic threshold regression models with fixed effects using ...
This paper addresses an important issue of modelling nonlinear asymmetric dynamics and unobserved in...
This paper extends the simple threshold regression framework of Hansen (2000) and Caner and Hansen (...
This paper addresses an important and challenging issue as how best to model nonlinear asymmetric dy...
Threshold models have a wide variety of applications in economics. Direct applications include model...
The empirical powers of recently proposed threshold cointegration tests are examined. Using an empir...
We provide a generalization of the Anderson-Rubin (AR) procedure for inference on parameters which r...