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 is 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.
翻译:最近,随着各组织聚集一堂,提出全球估计数,经常为此使用多种系统估算(MSE),现代奴隶制的量化最近受到越来越多的关注。根据长期的争议,人们重新出现关于现代奴隶制基本假设、MSE方法的稳健性以及这一应用中MSE估计数的准确性方面的分歧。我们的目标是帮助解决和解决这些争议。为了这样做,我们审查MSE、其假设以及现代奴隶制应用的常用模型。我们介绍了文献中所有公开提供的现代奴隶制数据集,提供了可复制的分析并突出了当前的问题。具体地说,我们采用了内部一致性方法,构建了有事实根据的数据组,使我们能够评估MSE估计的准确性。我们提出将估计者的大量抽样偏差定性为错误的假设的函数。然后,我们提出了一种替代传统(例如以靴套为基础的)可靠性评估的替代方法。我们提出了一种替代方法,使我们能够将MSE估计的轨迹对轨迹进行直观化,以说明估算的稳健性。最后,我们使用的补充性分析是对MSE的可靠性指导。