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Integration of blockchain and federated learning for Internet of Things: Recent advances and future challenges

机译:区块链和联邦学习的整合:最近的进展和未来的挑战

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The role of the Internet of Things (IoT) in the revolutionized society cannot be overlooked. The IoT can leverage advanced machine learning (ML) algorithms for its applications. However, given the fact of massive data, which is stored at a central cloud server, adopting centralized machine learning algorithms is not a viable option due to immense computation cost and privacy leakage issues. Given such conditions, blockchain can be leveraged to enhance the privacy of IoT networks by making them decentralized without any central authority. Nevertheless, the sensitive and massive data that is stored in distributive fashion, leveraged it for application purpose, is still a challenging task. To overcome this challenging task, federated learning (FL), which is a new breed of ML is the most promising solution that brings learning to the end devices without sharing the private data to the central server. In the FL mechanism, the central server act as an orchestrator to start the FL learning process, and only model parameters' updates are shared between end devices and the central orchestrator. Although FL can provide better privacy and data management, it is still in the development phase and has not been adopted by various communities due to its unknown privacy issues. In this paper first, we present the notion of blockchain and its application in IoT systems. Then we describe the privacy issues related to the implementation of blockchain in IoT and present privacy preservation techniques to cope with the privacy issues. Second, we introduce the FL application in IoT systems, devise a taxonomy, and present privacy threats in FL. Afterward, we present IoT-based use cases on envisioned dispersed federated learning and introduce blockchain-based traceability functions to improve privacy. Finally, open research gaps are addressed for future work.
机译:事物互联网(物联网)在革命的社会中的作用不能被忽视。 IOT可以利用先进的机器学习(ML)算法进行其应用。然而,考虑到存储在中央云服务器的大规模数据的事实,采用集中式机器学习算法,由于巨大的计算成本和隐私泄漏问题,采用集中式机器学习算法不是可行的选择。鉴于此类条件,可以利用区块链以增强IoT网络的隐私,使其在没有任何中央权威的情况下分散。然而,以分配方式存储的敏感和大规模数据,利用它用于应用目的,仍然是一个具有挑战性的任务。为了克服这种具有挑战性的任务,联合学习(FL),这是一种新的ML品种是最有希望的解决方案,即在不将私有数据与中央服务器共享私有数据的情况下为终端设备带来最有前途的解决方案。在流动机制中,中央服务器充当乐队以启动流程,只有模型参数的更新在终端设备和中央协调时都是共享的。虽然FL可以提供更好的隐私和数据管理,但它仍在开发阶段,由于其未知的隐私问题,各个社区尚未通过。本文首先,我们介绍了区块链的概念及其在IOT系统中的应用。然后,我们描述了与IOT中区块链执行的隐私问题,并呈现隐私保存技术来应对隐私问题。其次,我们在物联网系统中介绍了流行的应用,设计了分类法,并在FL中呈现隐私威胁。之后,我们在设想的分散联盟学习和引入基于区块链的可追溯性函数以提高隐私的基于IoT的使用情况。最后,为未来的工作解决了开放研究差距。

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