Hierarchical Bayes estimation of small area proportions using statistical linkage of disparate data sources

10/10/2022
by   Soumojit Das, et al.
0

We propose a Bayesian approach to estimate finite population proportions for small areas. The proposed methodology improves on the traditional sample survey methods because, unlike the traditional methods, our proposed method borrows strength from multiple data sources. Our approach is fundamentally different from the existing small area Bayesian approach to the finite population sampling, which typically assumes a hierarchical model for all units of the finite population. We assume such model only for the units of the finite population in which the outcome variable observed; because for these units, the assumed model can be checked using existing statistical tools. Modeling unobserved units of the finite population is challenging because the assumed model cannot be checked in the absence of data on the outcome variable. To make reasonable modeling assumptions, we propose to form numerous cells for each small area using factors that potentially influence the binary outcome variable of interest. This strategy is expected to bring some degree of homogeneity within a given cell and also among cells from different small areas that are constructed with the same factor level combination. Instead of modeling true probabilities for unobserved individual units, we assume that population means of cells with the same combination of factor levels are identical across small areas and the population mean of true probabilities for a cell is identical to the mean of true values for the observed units in that cell. We apply our proposed methodology to a real-life COVID-19 survey, linking information from multiple disparate data sources to estimate vaccine-hesitancy rates (proportions) for 50 US states and Washington, D.C. (small areas). We also provide practical ways of model selection that can be applied to a wider class of models under similar setting but for a diverse range of scientific problems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/21/2023

Estimation of finite population proportions for small areas: a statistical data integration approach

Empirical best prediction (EBP) is a well-known method for producing rel...
research
05/11/2021

Estimation of mask effectiveness perception for small domains using multiple data sources

All pandemics are local; so learning about the impacts of pandemics on p...
research
06/16/2019

Bayesian Finite Population Modeling for Spatial Process Settings

We develop a Bayesian model-based approach to finite population estimati...
research
05/12/2021

Synthetic Area Weighting for Measuring Public Opinion in Small Areas

The comparison of subnational areas is ubiquitous but survey samples of ...

Please sign up or login with your details

Forgot password? Click here to reset