Social-Aware Clustered Federated Learning with Customized Privacy Preservation
Yuntao Wang, Zhou Su, Yanghe Pan, Tom H Luan, Ruidong Li, and Shui Yu

TL;DR
This paper introduces SCFL, a social-aware clustered federated learning framework that balances privacy and efficiency by leveraging social trust to form clusters, enabling secure local aggregation and customizable privacy controls.
Contribution
The paper proposes a novel social-aware clustering scheme for federated learning that enhances privacy and utility through trust-based grouping and adaptive privacy mechanisms.
Findings
SCFL improves model accuracy compared to traditional FL.
SCFL provides customizable privacy levels based on social trust.
Experiments demonstrate enhanced user payoff and privacy protection.
Abstract
A key feature of federated learning (FL) is to preserve the data privacy of end users. However, there still exist potential privacy leakage in exchanging gradients under FL. As a result, recent research often explores the differential privacy (DP) approaches to add noises to the computing results to address privacy concerns with low overheads, which however degrade the model performance. In this paper, we strike the balance of data privacy and efficiency by utilizing the pervasive social connections between users. Specifically, we propose SCFL, a novel Social-aware Clustered Federated Learning scheme, where mutually trusted individuals can freely form a social cluster and aggregate their raw model updates (e.g., gradients) inside each cluster before uploading to the cloud for global aggregation. By mixing model updates in a social group, adversaries can only eavesdrop the social-layer…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
