Variable Inclusion Strategies for Effective Quota Sampling and Propensity Modeling: An Application to SARS-CoV-2 Infection Prevalence Estimation

Author:

Li Yan1,Fay Michael2ORCID,Hunsberger Sally3,Graubard Barry I4

Affiliation:

1. Survey Methodology & Department of Epidemiology and Biostatistics, University of Maryland is a Professor with the Joint Program in , 1218 Lefrak Hall, College Park, MD 20742, USA

2. Mathematical Statistician with the Biostatistics Research Branch, Division of Clinical Research, National Institute of Allergy and Infectious Diseases is a , 5601 Fishers Lane, Room 4C40, Bethesda, MD 20892, USA

3. Mathematical Statistician with the Biostatistics Research Branch, Division of Clinical Research, National Institute of Allergy and Infectious Diseases is a , 5601 Fishers Lane, Room 4D13, Bethesda, MD 20892, USA

4. Biostatistics Branch, Division of Cancer Epidemiology & Genetics, National Cancer Institute is a Senior Investigator with the , 9609 Medical Center Dr, Room 7E140, Rockville, MD 20850, USA

Abstract

Abstract Public health policymakers must make crucial decisions rapidly during a pandemic. In such situations, accurate measurements from health surveys are essential. As a consequence of limited time and resource constraints, it may be infeasible to implement a probability-based sample that yields high response rates. An alternative approach is to select a quota sample from a large pool of volunteers, with the quota sample selection based on the census distributions of available—often demographic—variables, also known as quota variables. In practice, however, census data may only contain a subset of the required predictor variables. Thus, the realized quota sample can be adjusted by propensity score pseudoweighting using a “reference” probability-based survey that contains more predictor variables. Motivated by the SARS-CoV-2 serosurvey (a quota sample conducted in 2020 by the National Institutes of Health), we identify the condition under which the quota variables can be ignored in constructing the propensity model but still produce nearly unbiased estimation of population means. We conduct limited simulations to evaluate the bias and variance reduction properties of alternative weighting strategies for quota sample estimates under three propensity models that account for varying sets of predictors and degrees of correlation among the predictor sets and then apply our findings to the empirical data.

Publisher

Oxford University Press (OUP)

Subject

Applied Mathematics,Statistics, Probability and Uncertainty,Social Sciences (miscellaneous),Statistics and Probability

Reference25 articles.

1. Summary Report of the AAPOR Task Force on Non-Probability Sampling;Baker;Journal of Survey Statistics and Methodology,2013

2. Are Survey Weights Needed? A Review of Diagnostic Tests in Regression Analysis;Bollen;Annual Review of Statistics and Its Application,2016

3. Doubly Robust Inference with Nonprobability Survey Samples;Chen;Journal of the American Statistical Association,2020

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