Composition Attacks and Auxiliary Information in Data Privacy
Srivatsava Ranjit Ganta, Shiva Prasad Kasiviswanathan, Adam Smith

TL;DR
This paper examines how composition attacks can breach privacy in data anonymization, demonstrating the limitations of current models and highlighting the robustness of differential privacy against such attacks.
Contribution
It reveals the vulnerability of many anonymization techniques to composition attacks and shows that differential privacy inherently resists these attacks, enabling modular privacy-preserving data releases.
Findings
Composition attacks can breach privacy in many anonymization schemes.
Differential privacy resists composition attacks even with auxiliary information.
Relaxations of differential privacy also maintain resistance to composition attacks.
Abstract
Privacy is an increasingly important aspect of data publishing. Reasoning about privacy, however, is fraught with pitfalls. One of the most significant is the auxiliary information (also called external knowledge, background knowledge, or side information) that an adversary gleans from other channels such as the web, public records, or domain knowledge. This paper explores how one can reason about privacy in the face of rich, realistic sources of auxiliary information. Specifically, we investigate the effectiveness of current anonymization schemes in preserving privacy when multiple organizations independently release anonymized data about overlapping populations. 1. We investigate composition attacks, in which an adversary uses independent anonymized releases to breach privacy. We explain why recently proposed models of limited auxiliary information fail to capture composition attacks.…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Privacy, Security, and Data Protection
