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Published March 2014 | Published
Journal Article Open

Privacy and Data-Based Research

Abstract

What can we, as users of microdata, formally guarantee to the individuals (or firms) in our dataset, regarding their privacy? We retell a few stories, well-known in data-privacy circles, of failed anonymization attempts in publicly released datasets. We then provide a mostly informal introduction to several ideas from the literature on differential privacy, an active literature in computer science that studies formal approaches to preserving the privacy of individuals in statistical databases. We apply some of its insights to situations routinely faced by applied economists, emphasizing big-data contexts.

Additional Information

© 2014 American Economic Association. For useful comments on an early draft, we thank Dan Benjamin, Avrim Blum, Kamalika Chaudhuri, Hank Greely, Aleksandra Korolova, Frank McSherry, Ilya Mironov, Denis Nekipelov, Kobbi Nissim, Ted O'Donoghue, Grant Schoenebeck, Moses Shayo, Adam Smith, Latanya Sweeney, Kunal Talwar, and Jonathan Ullman. We are also grateful to the editors—David Autor, Chang-Tai Hsieh, Ulrike Malmendier, and Timothy Taylor—for their encouragement and comments. Ligett's work was supported in part by an NSF CAREER award (CNS-1254169), the US–Israel Binational Science Foundation (grant 2012348), the Charles Lee Powell Foundation, a Google Faculty Research Award, and a Microsoft Faculty Fellowship.

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August 19, 2023
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