A framework for privacy-preservation of IoT healthcare data using Federated Learning and blockchain technology
【Author】 Singh, Saurabh; Rathore, Shailendra; Alfarraj, Osama; Tolba, Amr; Yoon, Byungun
【Source】FUTURE GENERATION COMPUTER SYSTEMS-THE INTERNATIONAL JOURNAL OF ESCIENCE
【影响因子】7.307
【Abstract】With the dramatically increasing deployment of IoT (Internet-of-Things) and communication, data has always been a major priority to achieve intelligent healthcare in a smart city. For the modern environment, valuable assets are user IoT data. The privacy policy is even the biggest necessity to secure user's data in a deep-rooted fundamental infrastructure of network and advanced applications, including smart healthcare. Federated learning acts as a special machine learning technique for privacy preserving and offers to contextualize data in a smart city. This article proposes Blockchain and Federated Learning-enabled Secure Architecture for Privacy-Preserving in Smart Healthcare, where Blockchain-based IoT cloud platforms are used for security and privacy. Federated Learning technology is adopted for scalable machine learning applications like healthcare. Furthermore, users can obtain a well-trained machine learning model without sending personal data to the cloud. Moreover, it also discussed the applications of federated learning for a distributed secure environment in a smart city.& nbsp;(c) 2021 Published by Elsevier B.V.
【Keywords】Federated Learning; Privacy-preserving; Blockchain; Internet-of-Things
【发表时间】2022 APR
【收录时间】2022-04-07
【文献类型】期刊
【主题类别】
区块链技术-隐私计算-
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