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Machine Learning Adoption in Blockchain-Based Smart Applications: The Challenges, and a Way Forward

机译:基于区块链的智能应用中的机器学习采用:挑战,以及前进的方式

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摘要

In recent years, the emergence of blockchain technology (BT) has become a unique, most disruptive, and trending technology. The decentralized database in BT emphasizes data security and privacy. Also, the consensus mechanism in it makes sure that data is secured and legitimate. Still, it raises new security issues such as majority attack and double-spending. To handle the aforementioned issues, data analytics is required on blockchain based secure data. Analytics on these data raises the importance of arisen technology Machine Learning (ML). ML involves the rational amount of data to make precise decisions. Data reliability and its sharing are very crucial in ML to improve the accuracy of results. The combination of these two technologies (ML and BT) can provide highly precise results. In this paper, we present a detailed study on ML adoption for making BT-based smart applications more resilient against attacks. There are various traditional ML techniques, for instance, Support Vector Machines (SVM), clustering, bagging, and Deep Learning (DL) algorithms such as Convolutional Neural Network (CNN) and Long short-term memory (LSTM) can be used to analyse the attacks on a blockchain-based network. Further, we include how both the technologies can be applied in several smart applications such as Unmanned Aerial Vehicle (UAV), Smart Grid (SG), healthcare, and smart cities. Then, future research issues and challenges are explored. At last, a case study is presented with a conclusion.
机译:近年来,区块链技术(BT)的出现已成为独特,最具破坏性和趋势的技术。 BT中的分散数据库强调数据安全和隐私。此外,它的共识机制确保了数据是安全和合法的。尽管如此,它还提出了多数攻击和双重支出等新的安全问题。为了处理上述问题,基于区块链的安全数据需要数据分析。这些数据的分析提高了出现技术机器学习(ML)的重要性。 ML涉及合理的数据量,以确保精确的决定。数据可靠性及其共享在ML中非常重要,以提高结果的准确性。这两种技术(ML和BT)的组合可以提供高精度的结果。在本文中,我们对ML采用提供了详细研究,使基于BT的智能应用更具弹性抗攻击。有各种传统的ML技术,例如,支持向量机(SVM),聚类,袋装和深度学习(DL)算法,例如卷积神经网络(CNN)和长短期内存(LSTM)可用于分析基于区块的网络攻击。此外,我们包括如何在几种智能应用中应用两种技术,例如无人驾驶车辆(UAV),智能电网(SG),医疗保健和智能城市。然后,探讨了未来的研究问题和挑战。最后,提供了一个结论的案例研究。

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