4.6 Article

Statistical Agent-Based Models for Discrete Spatio-Temporal Systems

Journal

JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION
Volume 105, Issue 489, Pages 236-248

Publisher

TAYLOR & FRANCIS INC
DOI: 10.1198/jasa.2009.tm09036

Keywords

Binary data; Cellular automata; Dynamical system; Hierarchical Bayesian model

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Agent-based models have been used to mimic natural processes in a variety of fields. from biology to social science By specifying mechanistic models that describe how small-scale processes hi net and then scaling them up. agent-based approaches can result in very complicated large-scale behavior while often relying on only a small set of initial conditions and intuitive rules Although many agent-based models are used strictly la a Simulation context. statistical implementations are less common To characterize complex dynamic processes such as the spread of epidemics. we present a hierarchical Bayesian framework for formal statistical agent-based modeling using spatiotemporal binary data Our approach is based on an intuitive parameterization of the system dynamics and Call explicitly accommodate directionally varying dispersal. long distance dispersal. and spatial heterogeneity

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