State space models are considered for observations which have non-Gaussian distri-butions. We obtain accurate approximations to the loglikelihood for such models by Monte Carlo simulation. Devices are introduced which improve the accuracy of the approximations and which increase computational efficiency. The loglikelihood function is maximised numerically to obtain estimates of the unknown hyperparameters. Standard errors of the estimates due to simulation are calculated. Details are given for the important special cases where the observations come from an exponential family distribution and where the observation equation is linear but the observation errors are non-Gaussian. The techniques are illustrated with a series for which the observ...
Partial non-Gaussian state-space models include many models of interest while keeping a convenient a...
Nonlinear non-Gaussian state-space models arise in numerous applications in control and signal proce...
Abstract: Gaussian process state-space models (GP-SSMs) are a very flexible family of models of nonl...
We develop a proposal or importance density for state space models with a nonlinear non-Gaussian obs...
We develop a proposal or importance density for state space models with a nonlinear non-Gaussian obs...
In this paper we provide methods for estimating non-Gaussian time series models. These techniques re...
In this paper we suggest the use of simulation techniques to extend the applicability of the usual G...
The analysis of non-Gaussian time series using state space models is considered from both classical ...
The impact of parameterisation on the simulation efficiency of Bayesian Markov chain Monte Carlo (MC...
Introduction Linear Gaussian state space models are used extensively, with unknown parameters usuall...
In this paper we suggest the use of simulation techniques to extend the applicability of the usual G...
The likelihood function of a general non-linear, non-Gaussian state space model is a high-dimensiona...
The impact of parameterisation on the simulation efficiency of Bayesian Markov chain Monte Carlo (MC...
In this paper we introduce a new class of state space models based on shot-noise simulation represen...
We propose a gradient-based simulated maximum likelihood estimation to estimate unknown parameters i...
Partial non-Gaussian state-space models include many models of interest while keeping a convenient a...
Nonlinear non-Gaussian state-space models arise in numerous applications in control and signal proce...
Abstract: Gaussian process state-space models (GP-SSMs) are a very flexible family of models of nonl...
We develop a proposal or importance density for state space models with a nonlinear non-Gaussian obs...
We develop a proposal or importance density for state space models with a nonlinear non-Gaussian obs...
In this paper we provide methods for estimating non-Gaussian time series models. These techniques re...
In this paper we suggest the use of simulation techniques to extend the applicability of the usual G...
The analysis of non-Gaussian time series using state space models is considered from both classical ...
The impact of parameterisation on the simulation efficiency of Bayesian Markov chain Monte Carlo (MC...
Introduction Linear Gaussian state space models are used extensively, with unknown parameters usuall...
In this paper we suggest the use of simulation techniques to extend the applicability of the usual G...
The likelihood function of a general non-linear, non-Gaussian state space model is a high-dimensiona...
The impact of parameterisation on the simulation efficiency of Bayesian Markov chain Monte Carlo (MC...
In this paper we introduce a new class of state space models based on shot-noise simulation represen...
We propose a gradient-based simulated maximum likelihood estimation to estimate unknown parameters i...
Partial non-Gaussian state-space models include many models of interest while keeping a convenient a...
Nonlinear non-Gaussian state-space models arise in numerous applications in control and signal proce...
Abstract: Gaussian process state-space models (GP-SSMs) are a very flexible family of models of nonl...