On the Reliability of Multiple Systems Estimation for the Quantification of Modern Slavery

Author:

Binette Olivier1,Steorts Rebecca C.

Affiliation:

1. Department of Statistical Science Duke University , Durham, North Carolina , USA

Abstract

Abstract The quantification of modern slavery has received increased attention recently as organizations have come together to produce global estimates, where multiple systems estimation (MSE) is often used to this end. Echoing a long-standing controversy, disagreements have re-surfaced regarding the underlying MSE assumptions, the robustness of MSE methodology and the accuracy of MSE estimates in this application. Our goal was to help address and move past these controversies. To do so, we review MSE, its assumptions, and commonly used models for modern slavery applications. We introduce all of the publicly available modern slavery datasets in the literature, providing a reproducible analysis and highlighting current issues. Specifically, we utilize an internal consistency approach that constructs subsets of data for which ground truth is available, allowing us to evaluate the accuracy of MSE estimators. Next, we propose a characterization of the large sample bias of estimators as a function of misspecified assumptions. Then, we propose an alternative to traditional (e.g. bootstrap-based) assessments of reliability, which allows us to visualize trajectories of MSE estimates to illustrate the robustness of estimates. Finally, our complementary analyses are used to provide guidance regarding the application and reliability of MSE methodology.

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Economics and Econometrics,Social Sciences (miscellaneous),Statistics and Probability

Reference106 articles.

1. On the identifiability of latent class models for multiple-systems estimation;Aleshin-Guendel,2020

2. Rcapture: loglinear models for capture-recapture in R;Baillargeon;Journal of Statistical Software,2007

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