Empirical scientists often are faced with incomplete data and desire imputations for their missing data values. The expectation-maximization algorithm is a generic tool that offers maximum likelihood solutions for such data sets. This article pursues this type of solution for Poisson random variables, utilizing a generalized linear model extension that mirrors the linear analysis of a covariance regression specification. This formulation allows a mixed model to be implemented and contrasted with a Poisson-gamma mixture (i.e., negative binomial) model. Simple comparisons are made between model specification results for a population counts example, with and without a constraint on the total of the missing counts. © 2013 The Ohio State University.
CITATION STYLE
Griffith, D. A. (2013). Estimating missing data values for georeferenced poisson counts. Geographical Analysis, 45(3), 259–284. https://doi.org/10.1111/gean.12015
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