Visible to the public Use Privacy in Data-Driven Systems: Theory and Experiments with Machine Learnt Programs

TitleUse Privacy in Data-Driven Systems: Theory and Experiments with Machine Learnt Programs
Publication TypeConference Paper
Year of Publication2017
AuthorsDatta, Anupam, Fredrikson, Matthew, Ko, Gihyuk, Mardziel, Piotr, Sen, Shayak
Conference NameProceedings of the 2017 ACM SIGSAC Conference on Computer and Communications Security
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number978-1-4503-4946-8
Keywordscausal analysis, control theory, Measurement, Metrics, privacy, privacy models, proxy, pubcrawl, use privacy
Abstract

This paper presents an approach to formalizing and enforcing a class of use privacy properties in data-driven systems. In contrast to prior work, we focus on use restrictions on proxies (i.e. strong predictors) of protected information types. Our definition relates proxy use to intermediate computations that occur in a program, and identify two essential properties that characterize this behavior: 1) its result is strongly associated with the protected information type in question, and 2) it is likely to causally affect the final output of the program. For a specific instantiation of this definition, we present a program analysis technique that detects instances of proxy use in a model, and provides a witness that identifies which parts of the corresponding program exhibit the behavior. Recognizing that not all instances of proxy use of a protected information type are inappropriate, we make use of a normative judgment oracle that makes this inappropriateness determination for a given witness. Our repair algorithm uses the witness of an inappropriate proxy use to transform the model into one that provably does not exhibit proxy use, while avoiding changes that unduly affect classification accuracy. Using a corpus of social datasets, our evaluation shows that these algorithms are able to detect proxy use instances that would be difficult to find using existing techniques, and subsequently remove them while maintaining acceptable classification performance.

URLhttps://dl.acm.org/citation.cfm?doid=3133956.3134097
DOI10.1145/3133956.3134097
Citation Keydatta_use_2017