Secure Embedding Aggregation for Federated Representation Learning
Machine Learning
2023-05-05 v2 Cryptography and Security
Information Theory
math.IT
Abstract
We consider a federated representation learning framework, where with the assistance of a central server, a group of distributed clients train collaboratively over their private data, for the representations (or embeddings) of a set of entities (e.g., users in a social network). Under this framework, for the key step of aggregating local embeddings trained privately at the clients, we develop a secure embedding aggregation protocol named \scheme, which leverages all potential aggregation opportunities among all the clients, while providing privacy guarantees for the set of local entities and corresponding embeddings \emph{simultaneously} at each client, against a curious server and up to colluding clients.
Cite
@article{arxiv.2206.09097,
title = {Secure Embedding Aggregation for Federated Representation Learning},
author = {Jiaxiang Tang and Jinbao Zhu and Songze Li and Lichao Sun},
journal= {arXiv preprint arXiv:2206.09097},
year = {2023}
}