Optimizing Communication and Device Clustering for Clustered Federated Learning with Differential Privacy
Dongyu Wei, Xiaoren Xu, Shiwen Mao, Mingzhe Chen

TL;DR
This paper introduces a novel multi-agent reinforcement learning approach to optimize communication, device clustering, and privacy in federated learning, significantly improving convergence speed and training efficiency.
Contribution
It proposes a dynamic penalty-based MARL algorithm for joint optimization of RB allocation, user scheduling, and differential privacy in clustered federated learning.
Findings
Up to 20% faster convergence rate
15% improvement in accumulated rewards
Effective joint optimization of communication and privacy constraints
Abstract
In this paper, a secure and communication-efficient clustered federated learning (CFL) design is proposed. In our model, several base stations (BSs) with heterogeneous task-handling capabilities and multiple users with non-independent and identically distributed (non-IID) data jointly perform CFL training incorporating differential privacy (DP) techniques. Since each BS can process only a subset of the learning tasks and has limited wireless resource blocks (RBs) to allocate to users for federated learning (FL) model parameter transmission, it is necessary to jointly optimize RB allocation and user scheduling for CFL performance optimization. Meanwhile, our considered CFL method requires devices to use their limited data and FL model information to determine their task identities, which may introduce additional communication overhead. We formulate an optimization problem whose goal is…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Advanced Data and IoT Technologies · IoT and Edge/Fog Computing
