Reliable federated learning for mobile networks
Federated learning, as a promising machine learning approach, has emerged to leverage a distributed personalized dataset from a number of nodes, for example, mobile devices, to improve performance while simultaneously providing privacy preservation for mobile users. In federated learning, training d...
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sg-ntu-dr.10356-1544392021-12-22T08:14:25Z Reliable federated learning for mobile networks Kang, Jiawen Xiong, Zehui Niyato, Dusit Zou, Yuze Zhang, Y. Guizani, M. School of Computer Science and Engineering Engineering::Computer science and engineering Mobile Handsets Task Analysis Federated learning, as a promising machine learning approach, has emerged to leverage a distributed personalized dataset from a number of nodes, for example, mobile devices, to improve performance while simultaneously providing privacy preservation for mobile users. In federated learning, training data is widely distributed and maintained on the mobile devices as workers. A central aggregator updates a global model by collecting local updates from mobile devices using their local training data to train the global model in each iteration. However, unreliable data may be uploaded by the mobile devices (i.e., workers), leading to frauds in tasks of federated learning. The workers may perform unreliable updates intentionally, for example, the data poisoning attack, or unintentionally, for example, low-quality data caused by energy constraints or high-speed mobility. Therefore, finding out trusted and reliable workers in federated learning tasks becomes critical. In this article, the concept of reputation is introduced as a metric. Based on this metric, a reliable worker selection scheme is proposed for federated learning tasks. Consortium blockchain is leveraged as a decentralized approach for achieving efficient reputation management of the workers without repudiation and tampering. By numerical analysis, the proposed approach is demonstrated to improve the reliability of federated learning tasks in mobile networks. Agency for Science, Technology and Research (A*STAR) Ministry of Education (MOE) National Research Foundation (NRF) This work was supported in part by Singapore NRF National Satellite of Excellence, Design Science and Technology for Secure Critical Infrastructure NSoE DeST-SCI2019-0007; A*STAR-NTU-SUTD Joint Research Grant Call on Artifi cial Intelligence for the Future of Manufacturing RGANS1906, WASP/NTU M4082187 (4080); Singapore MOE Tier 1 2017-T1-002-007 RG122/17, MOE Tier 2 MOE2014-T2-2-015 ARC4/15, Singapore NRF2015-NRF-ISF001-2277, and Singapore EMA Energy Resilience NRF2017EWT-EP003-041; and the National Natural Science Foundation of China under Grant 61601336. 2021-12-22T08:14:25Z 2021-12-22T08:14:25Z 2020 Journal Article Kang, J., Xiong, Z., Niyato, D., Zou, Y., Zhang, Y. & Guizani, M. (2020). Reliable federated learning for mobile networks. IEEE Wireless Communications, 27(2), 72-80. https://dx.doi.org/10.1109/MWC.001.1900119 1556-6013 https://hdl.handle.net/10356/154439 10.1109/MWC.001.1900119 2-s2.0-85079692164 2 27 72 80 en NSoE DeST-SCI2019-0007 RGANS1906 WASP/NTU M4082187 (4080) 2017-T1-002-007 RG122/17 MOE2014-T2-2-015 ARC4/15 NRF2015-NRF-ISF001-2277 NRF2017EWT-EP003-041 IEEE Wireless Communications © 2020 IEEE. All rights reserved. |
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Engineering::Computer science and engineering Mobile Handsets Task Analysis Kang, Jiawen Xiong, Zehui Niyato, Dusit Zou, Yuze Zhang, Y. Guizani, M. Reliable federated learning for mobile networks |
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Federated learning, as a promising machine learning approach, has emerged to leverage a distributed personalized dataset from a number of nodes, for example, mobile devices, to improve performance while simultaneously providing privacy preservation for mobile users. In federated learning, training data is widely distributed and maintained on the mobile devices as workers. A central aggregator updates a global model by collecting local updates from mobile devices using their local training data to train the global model in each iteration. However, unreliable data may be uploaded by the mobile devices (i.e., workers), leading to frauds in tasks of federated learning. The workers may perform unreliable updates intentionally, for example, the data poisoning attack, or unintentionally, for example, low-quality data caused by energy constraints or high-speed mobility. Therefore, finding out trusted and reliable workers in federated learning tasks becomes critical. In this article, the concept of reputation is introduced as a metric. Based on this metric, a reliable worker selection scheme is proposed for federated learning tasks. Consortium blockchain is leveraged as a decentralized approach for achieving efficient reputation management of the workers without repudiation and tampering. By numerical analysis, the proposed approach is demonstrated to improve the reliability of federated learning tasks in mobile networks. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Kang, Jiawen Xiong, Zehui Niyato, Dusit Zou, Yuze Zhang, Y. Guizani, M. |
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Article |
author |
Kang, Jiawen Xiong, Zehui Niyato, Dusit Zou, Yuze Zhang, Y. Guizani, M. |
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Kang, Jiawen |
title |
Reliable federated learning for mobile networks |
title_short |
Reliable federated learning for mobile networks |
title_full |
Reliable federated learning for mobile networks |
title_fullStr |
Reliable federated learning for mobile networks |
title_full_unstemmed |
Reliable federated learning for mobile networks |
title_sort |
reliable federated learning for mobile networks |
publishDate |
2021 |
url |
https://hdl.handle.net/10356/154439 |
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1720447144406548480 |