Monte Carlo Estimation for Nonlinear Non-Gaussian State Space Models

Citation
Jungbacker, Borus et Koopman, Siem Jan, Monte Carlo Estimation for Nonlinear Non-Gaussian State Space Models, Biometrika , 94(4), 2007, pp. 827-839
Journal title
ISSN journal
00063444
Volume
94
Issue
4
Year of publication
2007
Pages
827 - 839
Database
ACNP
SICI code
Abstract
We develop a proposal or importance density for state space models with a nonlinear non-Gaussian observation vector y ~ p(yǀθ) and an unobserved linear Gaussian signal vector θ ~ p(θ). The proposal density is obtained from the Laplace approximation of the smoothing density p(θǀy). We present efficient algorithms to calculate the mode of p(θǀy) 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(yǀθ) is not log-concave. Additional results are presented that lead to computationally efficient implementations. We illustrate the methods for the stochastic volatility model with leverage.