Jia Zhenge, Zhou Tianren, Yan Zheyu, Hu Jingtong, Shi Yiyu
Department of Computer Science and Engineering, University of Notre Dame, Notre Dame, IN, 46556 USA.
School of Computer Science and Technology, Shandong University, Qingdao, 266200 China.
IEEE Trans Comput Aided Des Integr Circuits Syst. 2024 Oct;43(10):3157-3170. doi: 10.1109/tcad.2024.3388908. Epub 2024 Apr 15.
Federated learning (FL) has been widely adopted in IoT-enabled health monitoring on biosignals thanks to its advantages in data privacy preservation. However, the global model trained from FL generally performs unevenly across subjects since biosignal data is inherent with complex temporal dynamics. The morphological characteristics of biosignals with the same label can vary significantly among different subjects (i.e., inter-subject variability) while biosignals with varied temporal patterns can be collected on the same subject (i.e., intra-subject variability). To address the challenges, we present the Personalized Meta-Federated learning (PMFed) framework for personalized IoT-enabled health monitoring. Specifically, in the federated learning stage, a novel momentum-based model aggregating strategy is introduced to aggregate clients' models based on domain similarity in the meta-federated learning paradigm to obtain a well-generalized global model while speeding up the convergence. In the model personalizing stage, an adaptive model personalization mechanism is devised to adaptively tailor the global model based on the subject-specific biosignal features while preserving the learned cross-subject representations. We develop an IoT-enabled computing framework to evaluate the effectiveness of PMFed over three real-world health monitoring tasks. Experimental results show that the PMFed excels at detection performances in terms of F1 and accuracy by up to 9.4% and 8.7%, and reduces training overhead and throughput by up to 56.3% and 63.4% when compared with the SOTA federated learning algorithms.
由于联邦学习(FL)在数据隐私保护方面的优势,它已在基于物联网的生物信号健康监测中得到广泛应用。然而,由于生物信号数据具有复杂的时间动态特性,通过联邦学习训练的全局模型在不同受试者之间的表现通常不均衡。具有相同标签的生物信号的形态特征在不同受试者之间可能有显著差异(即受试者间变异性),而在同一受试者上可以收集到具有不同时间模式的生物信号(即受试者内变异性)。为应对这些挑战,我们提出了用于个性化物联网健康监测的个性化元联邦学习(PMFed)框架。具体而言,在联邦学习阶段,引入了一种基于动量的新型模型聚合策略,在元联邦学习范式中基于域相似性聚合客户端模型,以获得泛化良好的全局模型,同时加快收敛速度。在模型个性化阶段,设计了一种自适应模型个性化机制,基于特定受试者的生物信号特征自适应地调整全局模型,同时保留学习到的跨受试者表示。我们开发了一个基于物联网的计算框架,以评估PMFed在三个实际健康监测任务上的有效性。实验结果表明,与最先进的联邦学习算法相比,PMFed在F1和准确率方面的检测性能分别提高了9.4%和8.7%,训练开销和吞吐量分别降低了56.3%和63.4%。