Dynamic models for spatiotemporal data |
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Authors: | Jonathan R. Stroud,Peter Mü ller,& Bruno Sansó |
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Affiliation: | University of Chicago, USA,;Duke University, Durham, USA,;Universidad Simón Bolívar, Caracas, Venezuela |
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Abstract: | We propose a model for non-stationary spatiotemporal data. To account for spatial variability, we model the mean function at each time period as a locally weighted mixture of linear regressions. To incorporate temporal variation, we allow the regression coefficients to change through time. The model is cast in a Gaussian state space framework, which allows us to include temporal components such as trends, seasonal effects and autoregressions, and permits a fast implementation and full probabilistic inference for the parameters, interpolations and forecasts. To illustrate the model, we apply it to two large environmental data sets: tropical rainfall levels and Atlantic Ocean temperatures. |
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Keywords: | Bayesian inference Locally weighted mixture On-line inference Space–time modelling State space models. |
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