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Activity Number: 413 - Recent Advances in Statistical Modeling and Machine Learning for Official Statistics and Survey Methodology
Type: Topic Contributed
Date/Time: Wednesday, August 10, 2022 : 10:30 AM to 12:20 PM
Sponsor: Survey Research Methods Section
Abstract #322370
Title: Computationally Efficient Bayesian Heteroskedastic Modeling for Small Area Estimation
Author(s): Paul A. Parker* and Scott H. Holan
Companies: University of California Santa Cruz and University of Missouri/U.S. Census Bureau
Keywords: Gibbs Sampling; Mixed Models; Multivariate log-Gamma; Spatial; Volatility
Abstract:

Small area estimation has become an important tool in official statistics, used to construct estimates of population quantities for domains with small sample sizes. Typical area-level models function as a type of heteroskedastic regression, where the variance for each domain is assumed to be known following a design-based estimate. Recent work has considered hierarchical models for the variance, where the design-based estimates are used as an additional data point to model the latent true variance in each domain. These hierarchical models may incorporate covariate information, but can be difficult to sample from in high-dimensional settings. Utilizing recent distribution theory, we explore a class of Bayesian hierarchical models for small area estimation that smooth both the design-based estimate of the mean and the variance. In addition, we develop a class of unit-level models for heteroskedastic Gaussian data. Importantly, we incorporate both covariate information as well as spatial dependence, while retaining a conjugate model structure that allows for efficient sampling. We illustrate our methodology through an empirical simulation study as well as an application.


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

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