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Activity Number: 469 - 2022 GSS/SRMS/SSS Student Paper Competition Award Winners
Type: Topic Contributed
Date/Time: Wednesday, August 10, 2022 : 2:00 PM to 3:50 PM
Sponsor: Survey Research Methods Section
Abstract #320969
Title: Smoothed Model-Assisted Small Area Estimation
Author(s): Peter A. Gao* and Jon Wakefield
Companies: University of Washington and University of Washington
Keywords: small area estimation; survey statistics; spatial statistics; model-based geostatistics; demography; Bayesian statistics
Abstract:

In countries where census and sample survey data are limited, generating accurate subnational estimates of health and demographic indicators is challenging. Model-based geostatistical methods leverage covariate information and spatial smoothing to reduce the variability of estimates but often assume the survey design is ignorable, which may be inappropriate given the complex design of household surveys typically used in this context. On the other hand, small area estimation approaches common in the survey statistics literature do not incorporate both unit-level covariate information and spatial smoothing in a design-consistent way. We propose a smoothed model-assisted estimator that accounts for survey design and leverages both unit-level covariates and spatial smoothing, bridging the survey statistics and model-based geostatistics perspectives. Under certain assumptions, the new estimator can be viewed as both design-consistent and model-consistent, offering benefits from both perspectives. We demonstrate our estimator's performance using real and simulated data, comparing with existing design-based and model-based estimators.


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

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