Small Area Estimation via Multivariate Fay–Herriot Models with Latent Spatial Dependence |
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Authors: | Aaron T. Porter Christopher K. Wikle Scott H. Holan |
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Affiliation: | 1. Department of Applied Mathematics and Statistics, Colorado School of Mines, Golden, CO, USA;2. Department of Statistics, University of Missouri, Columbia, MO, USA |
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Abstract: | The Fay–Herriot model is a standard model for direct survey estimators in which the true quantity of interest, the superpopulation mean, is latent and its estimation is improved through the use of auxiliary covariates. In the context of small area estimation, these estimates can be further improved by borrowing strength across spatial regions or by considering multiple outcomes simultaneously. We provide here two formulations to perform small area estimation with Fay–Herriot models that include both multivariate outcomes and latent spatial dependence. We consider two model formulations. In one of these formulations the outcome‐by‐space dependence structure is separable. The other accounts for the cross dependence through the use of a generalized multivariate conditional autoregressive (GMCAR) structure. The GMCAR model is shown, in a state‐level example, to produce smaller mean square prediction errors, relative to equivalent census variables, than the separable model and the state‐of‐the‐art multivariate model with unstructured dependence between outcomes and no spatial dependence. In addition, both the GMCAR and the separable models give smaller mean squared prediction error than the state‐of‐the‐art model when conducting small area estimation on county level data from the American Community Survey. |
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Keywords: | American Community Survey Bayesian conditional autoregressive model GMCAR hierarchical model multivariate statistics survey methodology |
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