作者
Marco Arazzi, Mauro Conti, Antonino Nocera, Stjepan Picek
发表日期
2023/11/15
图书
Proceedings of the 2023 ACM SIGSAC Conference on Computer and Communications Security
页码范围
1482-1495
简介
Recently, researchers have successfully employed Graph Neural Networks (GNNs) to build enhanced recommender systems due to their capability to learn patterns from the interaction between involved entities. In addition, previous studies have investigated federated learning as the main solution to enable a native privacy-preserving mechanism for the construction of global GNN models without collecting sensitive data into a single computation unit. Still, privacy issues may arise as the analysis of local model updates produced by the federated clients can return information related to sensitive local data. For this reason, researchers proposed solutions that combine federated learning with Differential Privacy strategies and community-driven approaches, which involve combining data from neighbor clients to make the individual local updates less dependent on local sensitive data.
In this paper, we identify a crucial …
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