We consider likelihood inference and state estimation by means of importance sampling for state space models with a nonlinear non-Gaussian observation y ~ p(y|alpha) and a linear Gaussian state alpha ~ p(alpha). The importance density is chosen to be the Laplace approximation of the smoothing density p(alpha|y). We show that computationally efficient state space methods can be used to perform all necessary computations in all situations. It requires new derivations of the Kalman filter and smoother and the simulation smoother which do not rely on a linear Gaussian observation equation. Furthermore, results are presented that lead to a more effective implementation of importance sampling for state space models. An illustration is given for t...
Recently suggested procedures for simulating from the posterior density of states given a Gaussian s...
The analysis of non-Gaussian time series using state space models is considered from both classical ...
This article introduces a new efficient simulation smoother and disturbance smoother for general sta...
The construction of an importance density for partially non-Gaussian state space models is crucial w...
We propose a general likelihood evaluation method for nonlinear non-Gaussian state-space models usin...
<div><p>We propose a general likelihood evaluation method for nonlinear non-Gaussian state-space mod...
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...
We apply Harrison and Stevens\u27 (1976) state space model with switching to model additive outliers...
We first present a short review of Monte Carlo techniques for likelihood evaluation for state space ...
This paper proposes a new Sequential Monte Carlo algorithm to perform online estimation in the conte...
The first chapter of my thesis (co-authored with David N. DeJong, Jean-Francois Richard and Roman Li...
Simulation smoothing involves drawing state variables (or innovations) in discrete time state-space ...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...
The Bayesian estimation of the unknown parameters of state-space (dynamical) systems has received co...
Recently suggested procedures for simulating from the posterior density of states given a Gaussian s...
The analysis of non-Gaussian time series using state space models is considered from both classical ...
This article introduces a new efficient simulation smoother and disturbance smoother for general sta...
The construction of an importance density for partially non-Gaussian state space models is crucial w...
We propose a general likelihood evaluation method for nonlinear non-Gaussian state-space models usin...
<div><p>We propose a general likelihood evaluation method for nonlinear non-Gaussian state-space mod...
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...
We apply Harrison and Stevens\u27 (1976) state space model with switching to model additive outliers...
We first present a short review of Monte Carlo techniques for likelihood evaluation for state space ...
This paper proposes a new Sequential Monte Carlo algorithm to perform online estimation in the conte...
The first chapter of my thesis (co-authored with David N. DeJong, Jean-Francois Richard and Roman Li...
Simulation smoothing involves drawing state variables (or innovations) in discrete time state-space ...
In this paper, a method is introduced for approximating the likelihood for the unknown parameters of...
The Bayesian estimation of the unknown parameters of state-space (dynamical) systems has received co...
Recently suggested procedures for simulating from the posterior density of states given a Gaussian s...
The analysis of non-Gaussian time series using state space models is considered from both classical ...
This article introduces a new efficient simulation smoother and disturbance smoother for general sta...