AnoFel: Supporting Anonymity for Privacy-Preserving Federated Learning
Ghada Almashaqbeh, Zahra Ghodsi

TL;DR
AnoFel introduces a cryptographically secure framework that ensures user anonymity and supports dynamic participation in federated learning, addressing privacy concerns beyond data leakage.
Contribution
It is the first system to provide provable anonymity guarantees and support dynamic user participation in federated learning.
Findings
Supports large-scale federated learning with 512 clients
Client setup takes less than 3 seconds, training iteration in 3.2 seconds
Demonstrates practicality and efficiency compared to prior work
Abstract
Federated learning enables users to collaboratively train a machine learning model over their private datasets. Secure aggregation protocols are employed to mitigate information leakage about the local datasets. This setup, however, still leaks the participation of a user in a training iteration, which can also be sensitive. Protecting user anonymity is even more challenging in dynamic environments where users may (re)join or leave the training process at any point of time. In this paper, we introduce AnoFel, the first framework to support private and anonymous dynamic participation in federated learning. AnoFel leverages several cryptographic primitives, the concept of anonymity sets, differential privacy, and a public bulletin board to support anonymous user registration, as well as unlinkable and confidential model updates submission. Additionally, our system allows dynamic…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Internet Traffic Analysis and Secure E-voting
