基于NetFlow分析的类似方法优化ARP中毒攻击检测模型

Yohanes Priyo Atmojo, Dandy Pramana Hostiadi, I Made Darma Susila, Made Liandana, Gede Angga Pradipta, Putu Desiana Wulaning Ayu
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引用次数: 0

摘要

在网络时代,信息安全与威胁是一个值得关注的问题。攻击可以是恶意活动。其中一种被称为ARP中毒攻击活动,它通过非法访问目标计算机获取机密信息来伪造计算机身份进行攻击。此外,它还造成了网络中的业务死锁。介绍了基于规则和基于挖掘的ARP攻击检测模型。然而,它们不能表现出最佳的检测性能并获得高假阳性结果。提出了一种基于余弦相似度的相似性度量方法的ARP中毒攻击检测模型。目标是获得类似于ARP中毒攻击的主机活动的测量值。实验结果表明,该模型准确率为97.25%,召回率为96.43%,精密度为81%,相似阈值为0.488。与以往的研究结果比较,发现检测准确率高于以往的研究和一些分类方法。结果表明,该模型可以提高入侵检测性能,方便网络管理员分析计算机网络中的ARP中毒攻击。
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The Optimization of the ARP Poisoning Attack Detection Model Using a Similar Approach Based on NetFlow Analysis
Information security and threats are a concern in the cyber era. Attacks can be malicious activities. One of them is known as ARP poisoning attack activity, which attacks by falsifying a computer's identity through illegal access to retrieve confidential information in a target computer. Besides, it has also caused service deadlocks in the network. Previous studies have been introduced for the ARP Attack Detection model using rule-based and mining-based. Still, they cannot show optimal detection performance and obtain high false positive results. This paper proposed a detection model for ARP poisoning attacks using a similarity measurement approach adopting cosine similarity. The goal is to obtain measurements of host activities similar to ARP poisoning attacks. The experiment results showed that the model got an accuracy of 97.25%, recall of 96.43%, and precision of 81% with a similarity threshold value of 0.488. Comparison results with previous studies showed higher detection accuracy than previous studies and some classification methods. It shows that the model can improve intrusion detection performance and facilitate network administrators to analyze ARP poisoning attacks in computer networks.
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审稿时长
24 weeks
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