Bayesian pooling for analyzing categorical data from small areas

Articles and reports: 12-001-X202100100005

Description:

Bayesian pooling strategies are used to solve precision problems related to statistical analyses of data from small areas. In such cases, the subpopulation samples are usually small, even though the population might not be. As an alternative, similar data can be pooled in order to reduce the number of parameters in the model. Many surveys consist of categorical data on each area, collected into a contingency table. We consider hierarchical Bayesian pooling models with a Dirichlet process prior for analyzing categorical data based on small areas. However, the prior used to pool such data frequently results in an overshrinkage problem. To mitigate for this problem, the parameters are separated into global and local effects. This study focuses on data pooling using a Dirichlet process prior. We compare the pooling models using bone mineral density (BMD) data taken from the Third National Health and Nutrition Examination Survey for the period 1988 to 1994 in the United States. Our analyses of the BMD data are performed using a Gibbs sampler and slice sampling to carry out the posterior computations.

Issue Number: 2021001
Author(s): Nandram, Balgobin; Jo, Aejeong; Kim, Dal Ho

Main Product: Survey Methodology

FormatRelease dateMore information
HTMLJune 24, 2021
PDFJune 24, 2021

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