Heterogeneity-aware Personalized Federated Learning via Adaptive Dual-Agent Reinforcement Learning
Xi Chen, Qin Li, Haibin Cai, Ting Wang

TL;DR
This paper introduces HAPFL, a heterogeneity-aware personalized federated learning framework that uses multi-level reinforcement learning to optimize model allocation, training intensity, and knowledge sharing, significantly improving efficiency and accuracy in IoT environments.
Contribution
The paper proposes a novel HAPFL method that integrates reinforcement learning for adaptive model allocation and training control, along with knowledge distillation for personalized federated learning.
Findings
Reduces training time by up to 40.4%
Decreases straggling latency by up to 48%
Achieves high accuracy across benchmark datasets
Abstract
Federated Learning (FL) empowers multiple clients to collaboratively train machine learning models without sharing local data, making it highly applicable in heterogeneous Internet of Things (IoT) environments. However, intrinsic heterogeneity in clients' model architectures and computing capabilities often results in model accuracy loss and the intractable straggler problem, which significantly impairs training effectiveness. To tackle these challenges, this paper proposes a novel Heterogeneity-aware Personalized Federated Learning method, named HAPFL, via multi-level Reinforcement Learning (RL) mechanisms. HAPFL optimizes the training process by incorporating three strategic components: 1) An RL-based heterogeneous model allocation mechanism. The parameter server employs a Proximal Policy Optimization (PPO)-based RL agent to adaptively allocate appropriately sized, differentiated…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
