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Accurately detecting human trafficking is particularly challenging due to its covert nature, difficulty in distinguishing trafficking from non-trafficking exploitative conditions, and varying operational definitions. Typically, detecting human trafficking requires resource-intensive efforts from resource-constrained anti-trafficking stakeholders. Such measures may need personnel training or machine learning-based identification technologies that suffer from detection errors. Repeated usage of such measures risks biasing detection efforts and reducing detection effectiveness. Such problems raise the question: “How should imperfect detection resources be allocated to most effectively identify human trafficking?” As an answer, we construct a class of resource allocation models that considers various optimal allocation scenarios. These scenarios range from optimal location selection for monitoring to optimal allocation of a finite set of imperfect resources, given error rates. We illustrate the applicability of these models across both human and technology-facilitated detection contexts at the India–Nepal border and in the global seafood industry. Insights from our models help inform operational strategies for allocating limited anti-human trafficking resources in a way that effectively preserves human rights and dignity.
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Abhishek Ray
George Mason University
Viplove Arora
Scuola Internazionale Superiore di Studi Avanzati
Kayse Lee Maass
Northeastern University
IISE Transactions
Purdue University West Lafayette
Northeastern University
George Mason University
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Ray et al. (Mon,) studied this question.
synapsesocial.com/papers/6a20507ce9ca693ff1e722f9 — DOI: https://doi.org/10.1080/24725854.2023.2177364