Efficient Quantification of Profile Matching Risk in Social Networks
Anisa Halimi, Erman Ayday

TL;DR
This paper introduces a fast, graph-based belief propagation algorithm for quantifying profile matching risks across social networks, enabling real-time privacy risk assessment with high accuracy.
Contribution
It presents a novel, efficient belief propagation method for modeling profile matching attacks, significantly reducing computational complexity while maintaining accuracy.
Findings
Linear complexity in user pair number
High probability matching in real datasets
Comparable accuracy to state-of-the-art methods
Abstract
Anonymous data sharing has been becoming more challenging in today's interconnected digital world, especially for individuals that have both anonymous and identified online activities. The most prominent example of such data sharing platforms today are online social networks (OSNs). Many individuals have multiple profiles in different OSNs, including anonymous and identified ones (depending on the nature of the OSN). Here, the privacy threat is profile matching: if an attacker links anonymous profiles of individuals to their real identities, it can obtain privacy-sensitive information which may have serious consequences, such as discrimination or blackmailing. Therefore, it is very important to quantify and show to the OSN users the extent of this privacy risk. Existing attempts to model profile matching in OSNs are inadequate and computationally inefficient for real-time risk…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Internet Traffic Analysis and Secure E-voting · Spam and Phishing Detection
