On Markov Chain Monte Carlo Methods for Nonlinear and Non-gaussian State-space Models

Abstract

In this paper, a nonlinear and/or non-Gaussian smoother utilizing Markov chain Monte Carlo Methods is proposed, where the measurement and transition equations are specified in any general formulation and the error terms in the state-space model are not necessarily normal. The random draws are directly generated from the smoothing densities. For random… (More)

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