Authors
Aidmar Wainakh, Till Müßig, Tim Grube, Max Mühlhäuser
Publication date
2021/1/9
Conference
2021 IEEE 18th Annual Consumer Communications & Networking Conference (CCNC)
Pages
1-4
Publisher
IEEE
Description
Empowered by the high connectivity of manifold devices in today's world, distributed machine learning enables multiple, distributed users to build a joint model by sharing their gradients over a network. In this paper, we highlight the privacy risk of sharing gradients by proposing LLG, an algorithm to disclose the labels of the users' training data from their shared gradients. We conduct an empirical analysis on two datasets to demonstrate the validity of our algorithm. Results show that our approach effectively extracts the labels with high accuracy in different scenarios.
Total citations
20212022202320244658
Scholar articles
A Wainakh, T Müßig, T Grube, M Mühlhäuser - 2021 IEEE 18th Annual Consumer Communications & …, 2021