On-device diagnostic recommendation with heterogeneous federated BlockNets

被引:0
作者
Minh Hieu NGUYEN [1 ]
Thanh Trung HUYNH [2 ]
Thanh Toan NGUYEN [3 ]
Phi Le NGUYEN [4 ]
Hien Thu PHAM [5 ]
Jun JO [1 ]
Thanh Tam NGUYEN [1 ]
机构
[1] School of Information and Communication Technology, Griffith University
[2] School of Computer and Communication Sciences, Ecole Polytechnique Federale de Lausanne
[3] Faculty of Information Technology, HUTECH University
[4] School of Information and Communication Technology, Hanoi University of Science and Technology
[5] Commonwealth Scientific and Industrial Research Organization
关键词
D O I
暂无
中图分类号
R318 [生物医学工程]; TP391.3 [检索机]; TP18 [人工智能理论];
学科分类号
0831 ; 081104 ; 0812 ; 0835 ; 1405 ;
摘要
The evolution of edge computing has advanced the accessibility of E-health recommendation services, encompassing areas such as medical consultations, prescription guidance, and diagnostic assessments. Traditional methodologies predominantly utilize centralized recommendations, relying on servers to store client data and dispatch advice to users.However, these conventional approaches raise significant concerns regarding data privacy and often result in computational inefficiencies. E-health recommendation services, distinct from other recommendation domains, demand not only precise and swift analyses but also a stringent adherence to privacy safeguards, given the users' reluctance to disclose their identities or health information. In response to these challenges, we explore a new paradigm called on-device recommendation tailored to E-health diagnostics, where diagnostic support(such as biomedical image diagnostics), is computed at the client level.We leverage the advances of federated learning to deploy deep learning models capable of delivering expert-level diagnostic suggestions on clients. However, existing federated learning frameworks often deploy a singular model across all edge devices, overlooking their heterogeneous computational capabilities. In this work, we propose an adaptive federated learning framework utilizing BlockNets, a modular design rooted in the layers of deep neural networks, for diagnostic recommendation across heterogeneous devices. Our framework offers the flexibility for users to adjust local model configurations according to their device's computational power. To further handle the capacity skewness of edge devices, we develop a data-free knowledge distillation mechanism to ensure synchronized parameters of local models with the global model, enhancing the overall accuracy. Through comprehensive experiments across five real-world datasets, against six baseline models, within six experimental setups, and various data distribution scenarios, our architecture demonstrates unparalleled performance and robustness in terms of both accuracy and efficiency.
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页码:33 / 49
页数:17
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