FedICT: Federated Multi-task Distillation for Multi-access Edge Computing
Zhiyuan Wu, Sheng Sun, Yuwei Wang, Min Liu, Quyang Pan, Xuefeng Jiang,, Bo Gao

TL;DR
FedICT introduces a communication-efficient federated multi-task distillation framework for MEC, enabling personalized, heterogeneous ML models with reduced communication overhead and improved accuracy.
Contribution
The paper proposes FedICT, a novel method combining knowledge distillation with federated multi-task learning, addressing communication efficiency and model heterogeneity in MEC.
Findings
FedICT outperforms benchmarks in accuracy across datasets.
Achieves less than 1.2% communication overhead compared to FedAvg.
Reduces training rounds by up to 75% compared to FedGKT.
Abstract
The growing interest in intelligent services and privacy protection for mobile devices has given rise to the widespread application of federated learning in Multi-access Edge Computing (MEC). Diverse user behaviors call for personalized services with heterogeneous Machine Learning (ML) models on different devices. Federated Multi-task Learning (FMTL) is proposed to train related but personalized ML models for different devices, whereas previous works suffer from excessive communication overhead during training and neglect the model heterogeneity among devices in MEC. Introducing knowledge distillation into FMTL can simultaneously enable efficient communication and model heterogeneity among clients, whereas existing methods rely on a public dataset, which is impractical in reality. To tackle this dilemma, Federated MultI-task Distillation for Multi-access Edge CompuTing (FedICT) is…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · IoT and Edge/Fog Computing · Recommender Systems and Techniques
MethodsKnowledge Distillation
