FedCache: A Knowledge Cache-driven Federated Learning Architecture for Personalized Edge Intelligence
Zhiyuan Wu, Sheng Sun, Yuwei Wang, Min Liu, Ke Xu, Wen Wang, Xuefeng, Jiang, Bo Gao, Jinda Lu

TL;DR
FedCache introduces a novel federated learning architecture that leverages a server-side knowledge cache and ensemble distillation to improve personalization and reduce communication overhead in edge AI applications.
Contribution
The paper proposes FedCache, a knowledge cache-driven PFL architecture that enhances personalization and communication efficiency in federated learning for edge intelligence.
Findings
Reduces communication costs compared to traditional PFL methods.
Improves model personalization and generalization on heterogeneous devices.
Achieves effective knowledge transfer using ensemble distillation with a server cache.
Abstract
Edge Intelligence (EI) allows Artificial Intelligence (AI) applications to run at the edge, where data analysis and decision-making can be performed in real-time and close to data sources. To protect data privacy and unify data silos among end devices in EI, Federated Learning (FL) is proposed for collaborative training of shared AI models across devices without compromising data privacy. However, the prevailing FL approaches cannot guarantee model generalization and adaptation on heterogeneous clients. Recently, Personalized Federated Learning (PFL) has drawn growing awareness in EI, as it enables a productive balance between local-specific training requirements inherent in devices and global-generalized optimization objectives for satisfactory performance. However, most existing PFL methods are based on the Parameters Interaction-based Architecture (PIA) represented by FedAvg, which…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Caching and Content Delivery · Age of Information Optimization
