Differentially Private Data Release on Graphs: Inefficiencies and Unfairness
Ferdinando Fioretto, Diptangshu Sen, Juba Ziani

TL;DR
This paper examines how differential privacy mechanisms affect bias and fairness in network data release, specifically focusing on edge weight privacy and its impact on shortest path routing decisions.
Contribution
It provides the first theoretical and empirical analysis of privacy-induced bias and unfairness in private network data release, especially for routing applications.
Findings
Privacy mechanisms introduce biases in released network data.
Biases can lead to unfair routing decisions across different populations.
The study offers insights into mitigating fairness issues in private network data sharing.
Abstract
Networks are crucial components of many sectors, including telecommunications, healthcare, finance, energy, and transportation.The information carried in such networks often contains sensitive user data, like location data for commuters and packet data for online users. Therefore, when considering data release for networks, one must ensure that data release mechanisms do not leak information about individuals, quantified in a precise mathematical sense. Differential Privacy (DP) is the widely accepted, formal, state-of-the-art technique, which has found use in a variety of real-life settings including the 2020 U.S. Census, Apple users' device data, or Google's location data. Yet, the use of DP comes with new challenges, as the noise added for privacy introduces inaccuracies or biases and further, DP techniques can also distribute these biases disproportionately across different…
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Taxonomy
TopicsCryptography and Data Security · Privacy-Preserving Technologies in Data · Distributed systems and fault tolerance
