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Privacy-Aware Edge Computation Offloading With Federated Learning in Healthcare Consumer Electronics System

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Privacy-Aware Edge Computation Offloading With Federated Learning in Healthcare Consumer Electronics System. / Fei, Yiming; Fang, Hao; Yan, Zheng et al.
In: IEEE Transactions on Consumer Electronics, 28.01.2025.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Fei, Y, Fang, H, Yan, Z, Qi, L, Bilal, M, Li, Y, Xu, X & Zhou, X 2025, 'Privacy-Aware Edge Computation Offloading With Federated Learning in Healthcare Consumer Electronics System', IEEE Transactions on Consumer Electronics. https://doi.org/10.1109/tce.2025.3535753

APA

Fei, Y., Fang, H., Yan, Z., Qi, L., Bilal, M., Li, Y., Xu, X., & Zhou, X. (2025). Privacy-Aware Edge Computation Offloading With Federated Learning in Healthcare Consumer Electronics System. IEEE Transactions on Consumer Electronics. Advance online publication. https://doi.org/10.1109/tce.2025.3535753

Vancouver

Fei Y, Fang H, Yan Z, Qi L, Bilal M, Li Y et al. Privacy-Aware Edge Computation Offloading With Federated Learning in Healthcare Consumer Electronics System. IEEE Transactions on Consumer Electronics. 2025 Jan 28. Epub 2025 Jan 28. doi: 10.1109/tce.2025.3535753

Author

Fei, Yiming ; Fang, Hao ; Yan, Zheng et al. / Privacy-Aware Edge Computation Offloading With Federated Learning in Healthcare Consumer Electronics System. In: IEEE Transactions on Consumer Electronics. 2025.

Bibtex

@article{5e9f113862d84a2db30446df0f3a43cc,
title = "Privacy-Aware Edge Computation Offloading With Federated Learning in Healthcare Consumer Electronics System",
abstract = "The continuous iteration of consumer electronics has significantly promoted the development of medical devices, which has enabled the collection of large amounts of heterogeneous medical data. These data are offloaded from local devices to cloud servers for processing using traditional methods, which results in high transmission latency and the risk of privacy leakage. Additionally, researchers have employed federated learning to protect data privacy, but this approach can lead to a straggler effect due to the limited computational and communication resources of terminal devices. To address these issues, a computation offloading framework is designed to optimize task and resource allocation, addressing multi-optimization problems and mitigating the straggler effect in federated learning. Moreover, a novel computation offloading method within a federated learning framework assisted by edge computing, named DRWB, is proposed. Specifically, we develop a deep reinforcement learning-based approach to transfer lagging training tasks to idle edge servers, enhancing data processing speed, minimizing transmission delays, and protecting user privacy. Extensive experimental results demonstrate that the DRWB method outperforms baseline methods, showcasing superior performance in handling heterogeneous medical data tasks.",
author = "Yiming Fei and Hao Fang and Zheng Yan and Lianyong Qi and Muhammad Bilal and Yang Li and Xiaolong Xu and Xiaokang Zhou",
year = "2025",
month = jan,
day = "28",
doi = "10.1109/tce.2025.3535753",
language = "English",
journal = "IEEE Transactions on Consumer Electronics",
issn = "0098-3063",
publisher = "Institute of Electrical and Electronics Engineers Inc.",

}

RIS

TY - JOUR

T1 - Privacy-Aware Edge Computation Offloading With Federated Learning in Healthcare Consumer Electronics System

AU - Fei, Yiming

AU - Fang, Hao

AU - Yan, Zheng

AU - Qi, Lianyong

AU - Bilal, Muhammad

AU - Li, Yang

AU - Xu, Xiaolong

AU - Zhou, Xiaokang

PY - 2025/1/28

Y1 - 2025/1/28

N2 - The continuous iteration of consumer electronics has significantly promoted the development of medical devices, which has enabled the collection of large amounts of heterogeneous medical data. These data are offloaded from local devices to cloud servers for processing using traditional methods, which results in high transmission latency and the risk of privacy leakage. Additionally, researchers have employed federated learning to protect data privacy, but this approach can lead to a straggler effect due to the limited computational and communication resources of terminal devices. To address these issues, a computation offloading framework is designed to optimize task and resource allocation, addressing multi-optimization problems and mitigating the straggler effect in federated learning. Moreover, a novel computation offloading method within a federated learning framework assisted by edge computing, named DRWB, is proposed. Specifically, we develop a deep reinforcement learning-based approach to transfer lagging training tasks to idle edge servers, enhancing data processing speed, minimizing transmission delays, and protecting user privacy. Extensive experimental results demonstrate that the DRWB method outperforms baseline methods, showcasing superior performance in handling heterogeneous medical data tasks.

AB - The continuous iteration of consumer electronics has significantly promoted the development of medical devices, which has enabled the collection of large amounts of heterogeneous medical data. These data are offloaded from local devices to cloud servers for processing using traditional methods, which results in high transmission latency and the risk of privacy leakage. Additionally, researchers have employed federated learning to protect data privacy, but this approach can lead to a straggler effect due to the limited computational and communication resources of terminal devices. To address these issues, a computation offloading framework is designed to optimize task and resource allocation, addressing multi-optimization problems and mitigating the straggler effect in federated learning. Moreover, a novel computation offloading method within a federated learning framework assisted by edge computing, named DRWB, is proposed. Specifically, we develop a deep reinforcement learning-based approach to transfer lagging training tasks to idle edge servers, enhancing data processing speed, minimizing transmission delays, and protecting user privacy. Extensive experimental results demonstrate that the DRWB method outperforms baseline methods, showcasing superior performance in handling heterogeneous medical data tasks.

U2 - 10.1109/tce.2025.3535753

DO - 10.1109/tce.2025.3535753

M3 - Journal article

JO - IEEE Transactions on Consumer Electronics

JF - IEEE Transactions on Consumer Electronics

SN - 0098-3063

ER -