基于增强转导支持向量机的入侵检测

V. Priyalakshmi, R. Devi
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引用次数: 1

摘要

当今世界越来越相互联系,越来越依赖互联网及其提供的服务。保护网络和应用程序免受未经授权的攻击是互联网通信中最大的困难之一。已经提出了许多解决方案来处理安全问题,但是这些解决方案中的绝大多数始终无法快速有效地检测安全威胁。为了高精度地检测新的攻击,本文提出了一种利用机器学习技术进行入侵检测的方法。本文采用增强的转换支持向量机(Enhanced Transductive Support Vector Machine, ETSVM)方法对数据进行分类,以便更准确地检测出不同类型的入侵攻击。利用改进的萤火虫群优化(IGSO)技术选择更有针对性和更理想的特征。该方法对KDD CUP99和CSE-CIC-IDS2018数据集的入侵检测效果较好。精确度、召回率和准确性被用来评估所提出的模型在识别四种类型的网络攻击(dos、U2R、R2L和Probe)方面的性能。为了验证所提出的方法,提出了比较结果。
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Intrusion Detection Using Enhanced Transductive Support Vector Machine
The world is getting more interconnected and reliant on the Internet and the services it provides today. The protection of networks and apps from unauthorized attacks is one of the biggest difficulties in internet communication. Numerous solutions have been put out to deal with security concerns, yet the vast majority of these solutions consistently fall short of rapidly and effectively detecting security threats. In order to detect new attacks with high accuracy, a method for intrusion detection employing machine learning techniques is proposed in this article. Here, the Enhanced Transductive Support Vector Machine (ETSVM) method is used to classify the data in order to more accurately detect the different types of intrusion attacks. The more pertinent and ideal features are chosen using the Improved Glowworm Swarm Optimization (IGSO) technique. This method performs better at detecting intrusions on the KDD CUP99 and CSE-CIC-IDS2018 datasets. Precision, recall, and accuracy are used to assess the proposed model's performance in identifying the four types of cyber attacks-DoS, U2R, R2L, and Probe. In order to validate the proposed methodology, comparative findings are presented.
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