Analysis of Network Security in IoT-based Cloud Computing Using Machine Learning

Humaira Naeem
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Abstract

Network security in IoT-based cloud computing can benefit greatly from the application of machine learning techniques. IoT devices introduce unique security challenges with their large-scale deployments and diverse nature. Machine learning can help address these challenges by analyzing IoT network traffic, detecting anomalies, identifying potential threats, and enhancing overall network security. The security of cloud networks is validated using binary classification to detect attacks. Random forest classifiers achieved an accuracy of 96%, while K nearest classifier had an accuracy of 93% and a precision value of 0.96. The proposed model ensures security of big data against intrusion attacks on the network. Although machine learning techniques can be powerful for protecting cloud computing networks, challenges still need to be addressed before widespread adoption. Understanding the potential and limitations of machine learning approaches to network security canhelp researchers and practitioners develop more effective strategies for safeguarding their systems in an increasingly interconnected world. Network security of big data in cloud computing can be enhanced by applying machine learning techniques. Machine learning algorithms can analyze large amounts of data to detect patterns, anomalies, and potential security threats. Here are several ways machine learning can be utilized to improve network security in the context of big data and cloud computing.
利用机器学习分析基于物联网的云计算中的网络安全
基于物联网的云计算中的网络安全可从机器学习技术的应用中获益匪浅。物联网设备因其大规模部署和多样化特性而带来了独特的安全挑战。机器学习可通过分析物联网网络流量、检测异常情况、识别潜在威胁和增强整体网络安全性来帮助应对这些挑战。使用二进制分类检测攻击验证了云网络的安全性。随机森林分类器的准确率达到 96%,而 K nearest 分类器的准确率为 93%,精度值为 0.96。所提出的模型可确保大数据安全,防止网络受到入侵攻击。尽管机器学习技术可以有力地保护云计算网络,但在广泛应用之前仍需应对各种挑战。了解机器学习方法在网络安全方面的潜力和局限性,有助于研究人员和从业人员制定更有效的策略,在互联日益紧密的世界中保护他们的系统。云计算中大数据的网络安全可以通过应用机器学习技术得到加强。机器学习算法可以分析大量数据,检测模式、异常和潜在的安全威胁。以下是在大数据和云计算背景下利用机器学习提高网络安全的几种方法。
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