On the k-Anonymization of Time-varying and Multi-layer Social Graphs
Luca Rossi, Mirco Musolesi, Andrea Torsello

TL;DR
This paper addresses the challenge of achieving k-anonymity in dynamic, multi-layer social graphs by formulating an optimization problem to anonymize node degrees, ensuring privacy while maintaining data utility.
Contribution
It introduces a novel approach to k-anonymize time-varying and multi-layer graphs by reducing the problem to a Generalized Assignment Problem and proposing an efficient solution.
Findings
Effective anonymization of degrees in complex graphs
Reduction to a Generalized Assignment Problem
Successful experiments on synthetic and real-world data
Abstract
The popularity of online social media platforms provides an unprecedented opportunity to study real-world complex networks of interactions. However, releasing this data to researchers and the public comes at the cost of potentially exposing private and sensitive user information. It has been shown that a naive anonymization of a network by removing the identity of the nodes is not sufficient to preserve users' privacy. In order to deal with malicious attacks, k-anonymity solutions have been proposed to partially obfuscate topological information that can be used to infer nodes' identity. In this paper, we study the problem of ensuring k-anonymity in time-varying graphs, i.e., graphs with a structure that changes over time, and multi-layer graphs, i.e., graphs with multiple types of links. More specifically, we examine the case in which the attacker has access to the degree of the…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Privacy, Security, and Data Protection · Internet Traffic Analysis and Secure E-voting
