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Activity Number: 420 - Modern Modeling Approaches for Imputation Using Survey Data
Type: Invited
Date/Time: Thursday, August 12, 2021 : 4:00 PM to 5:50 PM
Sponsor: Survey Research Methods Section
Abstract #316664
Title: Computationally Efficient Bayesian Unit-Level Models for Non-Gaussian Data Under Informative Sampling
Author(s): Scott Holan* and Paul Parker and Ryan Janicki
Companies: University of Missouri and University of Missouri and US Census Bureau
Keywords: American Community Survey; Bayesian analysis; Informative sampling; Polya-Gamma; Pseudo-likelihood; Variational Bayes
Abstract:

Statistical estimates from survey samples have traditionally been obtained via design-based estimators. In many cases, these estimators tend to work well for quantities such as population totals or means, but can fall short as sample sizes become small. In today's “information age,” there is a strong demand for more granular estimates. To meet this demand, using a Bayesian pseudo-likelihood, we propose a computationally efficient unit-level modeling approach for non-Gaussian data collected under informative sampling designs. Specifically, we focus on binary and multinomial data. Our approach is both multivariate and multiscale, incorporating spatial dependence at the area-level. We illustrate our approach through an empirical simulation study and through a motivating application to health insurance estimates using the American Community Survey.


Authors who are presenting talks have a * after their name.

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