textabstractThis paper demonstrates that the class of conditionally linear and Gaussian state-space models offers a general and convenient framework for simultaneously handling nonlinearity, structural change and outliers in time series. Many popular nonlinear time series models, including threshold, smooth transition and Markov-Switching models, can be written in state-space form. It is then straightforward to add components that capture parameter instability and intervention effects. We advocate a Bayesian approach to estimation and inference, using an efficient implementation of Markov Chain Monte Carlo sampling schemes for such linear dynamic mixture models. The general modelling framework and the Bayesian methodology are illustrated by...
We introduce a statistical model for non-linear time series which iteratively segments the data into...
We describe a strategy for Markov chain Monte Carlo analysis of nonlinear, non-Gaussian state-space ...
We propose a nonlinear state space model that includes an unobserved level component and an unobserv...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
This paper considers the Bayesian analysis of threshold regression models. It shows that this analys...
Many structural break and regime-switching models have been used with macroeconomic and �nancial dat...
Many structural break and regime-switching models have been used with macroeconomic and …nancial dat...
Many modelling issues and policy debates in macroeconomics depend on whether macroeconomic times ser...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
We propose an innovations form of the structural model underlying exponential smoothing that is furt...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
Nonlinearity and high-order auto-dependence are common traits of univariate time series tracking suc...
This paper proposes an infinite dimension Markov switching model to accommo-date regime switching an...
Dynamic models extend state space models to non--normal observations. This paper suggests a specific...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
We introduce a statistical model for non-linear time series which iteratively segments the data into...
We describe a strategy for Markov chain Monte Carlo analysis of nonlinear, non-Gaussian state-space ...
We propose a nonlinear state space model that includes an unobserved level component and an unobserv...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
This paper considers the Bayesian analysis of threshold regression models. It shows that this analys...
Many structural break and regime-switching models have been used with macroeconomic and �nancial dat...
Many structural break and regime-switching models have been used with macroeconomic and …nancial dat...
Many modelling issues and policy debates in macroeconomics depend on whether macroeconomic times ser...
We propose a new class of Markov-switching (MS) models for business cycle analysis. As usually done ...
We propose an innovations form of the structural model underlying exponential smoothing that is furt...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
Nonlinearity and high-order auto-dependence are common traits of univariate time series tracking suc...
This paper proposes an infinite dimension Markov switching model to accommo-date regime switching an...
Dynamic models extend state space models to non--normal observations. This paper suggests a specific...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
We introduce a statistical model for non-linear time series which iteratively segments the data into...
We describe a strategy for Markov chain Monte Carlo analysis of nonlinear, non-Gaussian state-space ...
We propose a nonlinear state space model that includes an unobserved level component and an unobserv...