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Analysing the Role of Supervised and Unsupervised Machine Learning in IoT

机译:分析有监督和无监督机器学习在物联网中的作用

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To harness the value of data generated from IoT, there is a crucial requirement of new mechanisms. Machine learning (ML) is among the most suitable paradigms of computation which embeds strong intelligence within IoT devices. Various ML techniques are being widely utilised for improving network security in IoT. These techniques include reinforcement learning, semi-supervised learning, supervised learning, and unsupervised learning. This report aims to critically analyse the role played by supervised and unsupervised ML for the enhancement of IoT security.
机译:为了利用物联网产生的数据的价值,对新机制提出了至关重要的要求。机器学习(ML)是最合适的计算范例之一,它将强大的智能功能嵌入到IoT设备中。各种ML技术被广泛用于改善IoT中的网络安全性。这些技术包括强化学习,半监督学习,监督学习和无监督学习。本报告旨在严格分析有监督和无监督ML在增强IoT安全方面所扮演的角色。

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