Dependence-Robust Confidence Intervals for Capture–Recapture Surveys

Author:

Sun Jinghao1ORCID,Van Baelen Luk2,Plettinckx Els3,Crawford Forrest W4

Affiliation:

1. Yale School of Public Health PhD Candidate in Biostatistics at the , New Haven, CT, USA

2. Department of Epidemiology and Public Health at the Sciensano Senior Scientist in the , Rue Juliette Wytsmanstraat, 14, Brussels 1050, Belgium

3. Department of Epidemiology and Public Health at the Sciensano Principal Research Scientist at the , Rue Juliette Wytsmanstraat, 14, Brussels 1050, Belgium

4. Statistics & Data Science, Operations Associate Professor of Biostatistics, , and Ecology & Evolutionary Biology at the Yale University, New Haven, CT, USA

Abstract

Abstract Capture–recapture (CRC) surveys are used to estimate the size of a population whose members cannot be enumerated directly. CRC surveys have been used to estimate the number of Coronavirus Disease 2019 (COVID-19) infections, people who use drugs, sex workers, conflict casualties, and trafficking victims. When k-capture samples are obtained, counts of unit captures in subsets of samples are represented naturally by a 2k contingency table in which one element—the number of individuals appearing in none of the samples—remains unobserved. In the absence of additional assumptions, the population size is not identifiable (i.e., point identified). Stringent assumptions about the dependence between samples are often used to achieve point identification. However, real-world CRC surveys often use convenience samples in which the assumed dependence cannot be guaranteed, and population size estimates under these assumptions may lack empirical credibility. In this work, we apply the theory of partial identification to show that weak assumptions or qualitative knowledge about the nature of dependence between samples can be used to characterize a nontrivial confidence set for the true population size. We construct confidence sets under bounds on pairwise capture probabilities using two methods: test inversion bootstrap confidence intervals and profile likelihood confidence intervals. Simulation results demonstrate well-calibrated confidence sets for each method. In an extensive real-world study, we apply the new methodology to the problem of using heterogeneous survey data to estimate the number of people who inject drugs in Brussels, Belgium.

Funder

National Institutes of Health

Publisher

Oxford University Press (OUP)

Subject

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

Reference58 articles.

1. Simple Capture-Recapture Models Permitting Unequal Catchability and Variable Sampling Effort;Agresti;Biometrics,1994

2. Information Theory and an Extension of the Maximum Likelihood Principle

3. Multifile Partitioning for Record Linkage and Duplicate Detection;Aleshin-Guendel;Journal of the American Statistical Association,2022

4. An Investigation of Triple System Estimators in Censuses;Baffour;Statistical Journal of the IAOS,2013

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