Publication | Closed Access
A Monte Carlo Approach to Nonnormal and Nonlinear State-Space Modeling
541
Citations
25
References
1992
Year
EngineeringMarkov Chain Monte CarloState EstimationMonte Carlo ApproachUncertainty QuantificationManagementModeling And SimulationStatisticsBayesian Hierarchical ModelingMarginal Posterior DensitiesMonte CarloPredictive AnalyticsForecastingGibbs SamplerMonte Carlo SamplingSequential Monte CarloNonlinear FunctionalsMonte Carlo MethodStatistical Inference
Abstract A solution to multivariate state-space modeling, forecasting, and smoothing is discussed. We allow for the possibilities of nonnormal errors and nonlinear functionals in the state equation, the observational equation, or both. An adaptive Monte Carlo integration technique known as the Gibbs sampler is proposed as a mechanism for implementing a conceptually and computationally simple solution in such a framework. The methodology is a general strategy for obtaining marginal posterior densities of coefficients in the model or of any of the unknown elements of the state space. Missing data problems (including the k-step ahead prediction problem) also are easily incorporated into this framework. We illustrate the broad applicability of our approach with two examples: a problem involving nonnormal error distributions in a linear model setting and a one-step ahead prediction problem in a situation where both the state and observational equations are nonlinear and involve unknown parameters.
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