We develop a proposal or importance density for state space models with a nonlinear non-Gaussian observation vector y ∼ p(y¦θ) and an unobserved linear Gaussian signal vector θ ∼ p(θ). The proposal density is obtained from the Laplace approximation of the smoothing density p(θ¦y). We present efficient algorithms to calculate the mode of p(θ¦y) and to sample from the proposal density. The samples can be used for importance sampling and Markov chain Monte Carlo methods. The new results allow the application of these methods to state space models where the observation density p(y¦θ) is not log-concave. Additional results are presented that lead to computationally efficient implementations. We illustrate the methods for the stochastic volatilit...
The Bayesian estimation of the unknown parameters of state-space (dynamical) systems has received co...
The impact of parameterisation on the simulation efficiency of Bayesian Markov chain Monte Carlo (MC...
We consider the smoothing problem of estimating a sequence of state vectors given a nonlinear state ...
We develop a proposal or importance density for state space models with a nonlinear non-Gaussian obs...
We consider likelihood inference and state estimation by means of importance sampling for state spac...
<div><p>We propose a general likelihood evaluation method for nonlinear non-Gaussian state-space mod...
We propose a general likelihood evaluation method for nonlinear non-Gaussian state-space models usin...
State space models are considered for observations which have non-Gaussian distri-butions. We obtain...
The construction of an importance density for partially non-Gaussian state space models is crucial w...
We propose a new methodology for designing flexible proposal densities for the joint posterior densi...
Maximum likelihood estimation and likelihood ratio tests for nonlinear, non-Gaussian state-space mod...
This paper proposes a new Sequential Monte Carlo algorithm to perform online estimation in the conte...
This thesis is concerned with developing efficient MCMC (Markov Chain Monte Carlo) techniques for no...
We first present a short review of Monte Carlo techniques for likelihood evaluation for state space ...
This article introduces a new efficient simulation smoother and disturbance smoother for general sta...
The Bayesian estimation of the unknown parameters of state-space (dynamical) systems has received co...
The impact of parameterisation on the simulation efficiency of Bayesian Markov chain Monte Carlo (MC...
We consider the smoothing problem of estimating a sequence of state vectors given a nonlinear state ...
We develop a proposal or importance density for state space models with a nonlinear non-Gaussian obs...
We consider likelihood inference and state estimation by means of importance sampling for state spac...
<div><p>We propose a general likelihood evaluation method for nonlinear non-Gaussian state-space mod...
We propose a general likelihood evaluation method for nonlinear non-Gaussian state-space models usin...
State space models are considered for observations which have non-Gaussian distri-butions. We obtain...
The construction of an importance density for partially non-Gaussian state space models is crucial w...
We propose a new methodology for designing flexible proposal densities for the joint posterior densi...
Maximum likelihood estimation and likelihood ratio tests for nonlinear, non-Gaussian state-space mod...
This paper proposes a new Sequential Monte Carlo algorithm to perform online estimation in the conte...
This thesis is concerned with developing efficient MCMC (Markov Chain Monte Carlo) techniques for no...
We first present a short review of Monte Carlo techniques for likelihood evaluation for state space ...
This article introduces a new efficient simulation smoother and disturbance smoother for general sta...
The Bayesian estimation of the unknown parameters of state-space (dynamical) systems has received co...
The impact of parameterisation on the simulation efficiency of Bayesian Markov chain Monte Carlo (MC...
We consider the smoothing problem of estimating a sequence of state vectors given a nonlinear state ...