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arxiv: 1306.5202 · v1 · pith:QTF6POBHnew · submitted 2013-06-21 · 🧬 q-bio.QM · stat.ME

Nonparametric Bayesian grouping methods for spatial time-series data

classification 🧬 q-bio.QM stat.ME
keywords approachbayesiandatadescribemethodsmodelspatialtime-series
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We describe an approach for identifying groups of dynamically similar locations in spatial time-series data based on a simple Markov transition model. We give maximum-likelihood, empirical Bayes, and fully Bayesian formulations of the model, and describe exhaustive, greedy, and MCMC-based inference methods. The approach has been employed successfully in several studies to reveal meaningful relationships between environmental patterns and disease dynamics.

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