Centered parameterizations and dependence limitations in Markov random field models |
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Authors: | Mark S. Kaiser Petruţa C. Caragea Kyoji Furukawa |
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Affiliation: | 1. Department of Statistics, Iowa State University, IA, United States;2. Department of Statistics, Radiation Effects Research Foundation, Japan |
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Abstract: | Markov random field models incorporate terms representing local statistical dependence among variables in a discrete-index random field. Traditional parameterizations for models based on one-parameter exponential family conditional distributions contain components that would appear to reflect large-scale and small-scale model behaviors, and it is natural to attempt to match these structures with large-scale and small-scale patterns in a set of data. Traditional manners of parameterizing Markov random field models do not allow such correspondence, however. We propose an alternative centered parameterization that, while not leading to different models, allows a correspondence between model structures and data structures to be successfully accomplished. The ability to make these connections is important when incorporating covariate information into a model or if a sequence of models is fit over time to investigate and interpret possible changes in data structure. We demonstrate the improved interpretation that results from use of centered parameterizations. Centered parameterizations also lend themselves to computation of an interpretable decomposition of mean squared error, and this is demonstrated both analytically and through a simulated example. A breakdown in model behavior occurs even with centered parameterizations if dependence parameters in Markov random field models are allowed to become too large. This phenomenon is discussed and illustrated using an auto-logistic model. |
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Keywords: | Auto-models Conditionally specified models Lattice data Spatial structure Spatial dependence |
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