Combining Probability and Nonprobability Samples by Using Multivariate Mass Imputation Approaches with Application to Biomedical Research

Author:

Chen Sixia1ORCID,Woodruff Alexandra May1,Campbell Janis1,Vesely Sara1,Xu Zheng2ORCID,Snider Cuyler3

Affiliation:

1. Department of Biostatistics and Epidemiology, University of Oklahoma Health Sciences Center, 801 NE 13th St., Oklahoma City, OK 73104, USA

2. Department of Mathematics and Statistics, Wright State University, Dayton, OH 45324, USA

3. Southern Plains Tribal Health Board, 9705 Broadway Ext, Oklahoma City, OK 73114, USA

Abstract

Nonprobability samples have been used frequently in practice including public health study, economics, education, and political polls. Naïve estimates based on nonprobability samples without any further adjustments may suffer from serious selection bias. Mass imputation has been shown to be effective in practice to improve the representativeness of nonprobability samples. It builds an imputation model based on nonprobability samples and generates imputed values for all units in the probability samples. In this paper, we compare two mass imputation approaches including latent joint multivariate normal model mass imputation (e.g., Generalized Efficient Regression-Based Imputation with Latent Processes (GERBIL)) and fully conditional specification (FCS) procedures for integrating multiple outcome variables simultaneously. The Monte Carlo simulation study shows the benefits of GERBIL and FCS with predictive mean matching in terms of balancing the Monte Carlo bias and variance. We further evaluate our proposed method by combining the information from Tribal Behavioral Risk Factor Surveillance System and Behavioral Risk Factor Surveillance System data files.

Funder

National Institute on Minority Health and Health Disparities

NIGMS

Publisher

MDPI AG

Subject

General Computer Science

Reference25 articles.

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2. Summary report of the AAPOR task force on non-probability sampling;Baker;J. Surv. Stat. Methodol.,2013

3. Cochran, W.G. (1977). Sampling Techniques, John Wiley & Sons.

4. Wu, C., and Thompson, M.E. (2020). Sampling Theory and Practice, Springer International Publishing.

5. Vehovar, V., Toepoel, V., and Steinmetz, S. (2016). Non-Probability Sampling, SAGE Publications. The Sage Handbook of Survey Methods.

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