Potential of Privacy-Preserving Record Linkage for the Statistics of Hidden Population

Many populations are “hidden” from the point of view of traditional probabilistic surveys. They are populations for which we have no meaningful sampling frame and whose members may be difficult to identify. Examples include victims of human trafficking and civilian casualties in armed conflicts. Understanding these populations is central to policymaking and to prosecuting human rights violations, yet statistical inference remains extremely difficult in practice. […]

technical
statistics
machine learning
entity resolution
privacy
Authors
Affiliation

Andrew Demma

Duke University

Duke University

Published

August 7, 2022

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