This article considers the estimation of dynamic exogenous switching regression models and dynamic endogenous switching models. With autocorrelation in disturbances or latent lagged-dependent variables, likelihood functions of such models involve high-dimensional integrals and a huge number of summations over unobserved regime paths. Simulated likelihood methods and simulated methods of moments are available. These approaches simulate both continuous and discrete latent-dependent variables. By Monte Carlo experiments, it is found that the performances of various approaches depend crucially on how discrete state variables are simulated. The valuable approach is to simulate regime paths with regime probabilities based on the current and past ...
This paper proposes a two-step maximum likelihood estimation (MLE) procedure to deal with the proble...
Markov Switching models have been successfully applied to many economic problems. The most popular v...
This paper analyzes a new estimator for the structural parameters of dynamic models of discrete choi...
The performances of alternative two-stage estimators for the endogenous switching regression model w...
Following Hamilton (1989), estimation of Markov regime-switching regressions nearly always relies on...
This article considers the simulation of likelihood functions for dynamic disequilibrium models with...
This article reports Monte Carlo results on the simulated maximum likelihood estimation of discrete ...
We extend the Regime Switching for Dynamic Correlations (RSDC) model by Pelletier (Journal of Econom...
We extend the Regime Switching for Dynamic Correlations (RSDC) model by Pelletier (Journal of Econom...
The estimation of dynamic multi-market disequilibrium models is investigated. The dynamic multi-mark...
We consider a time series model with autoregressive conditional heteroskedas-ticity that is subject ...
We propose a new model for the variance between multiple time series, the Regime Switching Dynamic C...
This article studies the estimation of state space models whose parameters are switching endogenousl...
This paper develops a method for inference in dynamic discrete choice models with serially correlate...
We develop methods for Bayesian inference in vector error correction models which are subject to a v...
This paper proposes a two-step maximum likelihood estimation (MLE) procedure to deal with the proble...
Markov Switching models have been successfully applied to many economic problems. The most popular v...
This paper analyzes a new estimator for the structural parameters of dynamic models of discrete choi...
The performances of alternative two-stage estimators for the endogenous switching regression model w...
Following Hamilton (1989), estimation of Markov regime-switching regressions nearly always relies on...
This article considers the simulation of likelihood functions for dynamic disequilibrium models with...
This article reports Monte Carlo results on the simulated maximum likelihood estimation of discrete ...
We extend the Regime Switching for Dynamic Correlations (RSDC) model by Pelletier (Journal of Econom...
We extend the Regime Switching for Dynamic Correlations (RSDC) model by Pelletier (Journal of Econom...
The estimation of dynamic multi-market disequilibrium models is investigated. The dynamic multi-mark...
We consider a time series model with autoregressive conditional heteroskedas-ticity that is subject ...
We propose a new model for the variance between multiple time series, the Regime Switching Dynamic C...
This article studies the estimation of state space models whose parameters are switching endogenousl...
This paper develops a method for inference in dynamic discrete choice models with serially correlate...
We develop methods for Bayesian inference in vector error correction models which are subject to a v...
This paper proposes a two-step maximum likelihood estimation (MLE) procedure to deal with the proble...
Markov Switching models have been successfully applied to many economic problems. The most popular v...
This paper analyzes a new estimator for the structural parameters of dynamic models of discrete choi...