This paper considers robust inference in threshold regression models when the practitioners do not know whether at the threshold point the true specification has a kink or a jump, nesting previous works that assume either continuity or discontinuity at the threshold. We find that the parameter values under the kink restriction are irregular points of the Hessian matrix, destroying the asymptotic normality and inducing the cube-root convergence rate for the threshold estimate. However, we are able to obtain the same asymptotic distribution as Hansen (2000) for the quasi-likelihood ratio statistic for the unknown threshold. We propose to construct confidence intervals for the threshold by bootstrap test inversion. Finite sample performances o...
Continuous threshold regression is a common type of nonlinear regression that is attractive to many ...
This paper studies estimation and specification testing in threshold regression with endogeneity. Thr...
Threshold models have a wide variety of applications in economics. Direct applications include model...
This paper considers robust inference in threshold regression models when the practitioners do not k...
This paper develops robust bootstrap inference for a dynamic panel threshold model to improve the fi...
Within the context of threshold regressions, we show that asymptotically-valid likelihood-ratio-base...
This paper develops new statistical inference methods for the parameters in threshold regression mod...
This paper develops a general procedure to check the bootstrap validity in M-estimation. We apply th...
We propose a smoothed least squares estimator of the parameters of a threshold regression model. Our...
This paper studies likelihood-based estimation and inference in parametric discontinuous threshold r...
There is a growing literature on unit root testing in threshold autoregressive models. This paper ma...
The inference of the threshold point in threshold models critically depends on the assumption that t...
Threshold models have a wide variety of applications in economics. Direct applications include model...
This paper studies the robust estimation and inference of threshold models with integrated regres- s...
This paper studies the robust estimation and inference of threshold models with integrated regressor...
Continuous threshold regression is a common type of nonlinear regression that is attractive to many ...
This paper studies estimation and specification testing in threshold regression with endogeneity. Thr...
Threshold models have a wide variety of applications in economics. Direct applications include model...
This paper considers robust inference in threshold regression models when the practitioners do not k...
This paper develops robust bootstrap inference for a dynamic panel threshold model to improve the fi...
Within the context of threshold regressions, we show that asymptotically-valid likelihood-ratio-base...
This paper develops new statistical inference methods for the parameters in threshold regression mod...
This paper develops a general procedure to check the bootstrap validity in M-estimation. We apply th...
We propose a smoothed least squares estimator of the parameters of a threshold regression model. Our...
This paper studies likelihood-based estimation and inference in parametric discontinuous threshold r...
There is a growing literature on unit root testing in threshold autoregressive models. This paper ma...
The inference of the threshold point in threshold models critically depends on the assumption that t...
Threshold models have a wide variety of applications in economics. Direct applications include model...
This paper studies the robust estimation and inference of threshold models with integrated regres- s...
This paper studies the robust estimation and inference of threshold models with integrated regressor...
Continuous threshold regression is a common type of nonlinear regression that is attractive to many ...
This paper studies estimation and specification testing in threshold regression with endogeneity. Thr...
Threshold models have a wide variety of applications in economics. Direct applications include model...