Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian time series and longitudinal data, covering for example models for discrete longitudinal observations. As for non-Gaussian random coefficient models, a direct Bayesian approach leads to numerical integration problems, often intractable for more complicated data sets. Recent Markov chain Monte Carlo methods avoid this by repeated sampling from approximative posterior distributions, but there are still open questions about sampling schemes and convergence. In this article we consider simpler methods of inference based on posterior modes or, equivalently, maximum penalized likelihood estimation. From the latter point of view, the approach can also ...
This paper shows the formal equivalence of Kalman filtering and smoothing techniques to generalized ...
We develop methods for performing filtering and smoothing in nonlinear non-Gaussian dynamical models...
A multivariate, non-Bayesian, regression-based, or feasible generalized least squares (GLS)-based ap...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
State space or dynamic approaches to discrete or grouped duration data with competing risks or multi...
In likelihood-based approaches to robustify state space models, Gaussian error distributions are rep...
State-space smoothing has found many applications in science and engineering. Under linear and Gauss...
This paper surveys dynamic or state space models and their relationship to non- and semiparametric m...
We develop methods for performing smoothing computations in general state-space models. The methods ...
We present a general approach for Bayesian inference via Markov chain Monte Carlo (MCMC) simulation ...
This paper considers approximate smoothing for discretely observed non-linear stochastic differentia...
In this paper we suggest the use of simulation techniques to extend the applicability of the usual G...
This paper provides a new algorithm for estimating state space dynamic models and, as an example, it...
Very preliminary draft: comments welcome, please do not quote without permission of authors. We prop...
This paper shows the formal equivalence of Kalman filtering and smoothing techniques to generalized ...
We develop methods for performing filtering and smoothing in nonlinear non-Gaussian dynamical models...
A multivariate, non-Bayesian, regression-based, or feasible generalized least squares (GLS)-based ap...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
Dynamic regression or state space models provide a flexible framework for analyzing non-Gaussian tim...
State space or dynamic approaches to discrete or grouped duration data with competing risks or multi...
In likelihood-based approaches to robustify state space models, Gaussian error distributions are rep...
State-space smoothing has found many applications in science and engineering. Under linear and Gauss...
This paper surveys dynamic or state space models and their relationship to non- and semiparametric m...
We develop methods for performing smoothing computations in general state-space models. The methods ...
We present a general approach for Bayesian inference via Markov chain Monte Carlo (MCMC) simulation ...
This paper considers approximate smoothing for discretely observed non-linear stochastic differentia...
In this paper we suggest the use of simulation techniques to extend the applicability of the usual G...
This paper provides a new algorithm for estimating state space dynamic models and, as an example, it...
Very preliminary draft: comments welcome, please do not quote without permission of authors. We prop...
This paper shows the formal equivalence of Kalman filtering and smoothing techniques to generalized ...
We develop methods for performing filtering and smoothing in nonlinear non-Gaussian dynamical models...
A multivariate, non-Bayesian, regression-based, or feasible generalized least squares (GLS)-based ap...