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Detection of malicious and non-malicious website visitors using unsupervised neural network learning

机译:使用无监督神经网络学习检测恶意和非恶意网站访问者

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Distributed denials of service (DDoS) attacks are recognized as one of the most damaging attacks on the Internet security today. Recently, malicious web crawlers have been used to execute automated DDoS attacks on web sites across the WWW. In this study, we examine the use of two unsupervised neural network (NN) learning algorithms for the purpose web-log analysis: the Self-Organizing Map (SOM) and Modified Adaptive Resonance Theory 2 (Modified ART2). In particular, through the use of SOM and modified ART2, our work aims to obtain a better insight into the types and distribution of visitors to a public web-site based on their browsing behavior, as well as to investigate the relative differences and/or similarities between malicious web crawlers and other non-malicious visitor groups. The results of our study show that, even though there is a pretty clear separation between malicious web-crawlers and other visitor groups, 52% of malicious crawlers exhibit very 'human-like' browsing behavior and as such pose a particular challenge for future web-site security systems. Also, we show that some of the feature values of malicious crawlers that exhibit very 'human-like' browsing behavior are not significantly different than the features values of human visitors. Additionally, we show that Google, MSN and Yahoo crawlers exhibit distinct crawling behavior.
机译:分布式拒绝服务(DDoS)攻击被公认为当今互联网安全中最具破坏性的攻击之一。最近,恶意Web爬虫已被用来在WWW上对网站执行自动DDoS攻击。在这项研究中,我们检查了针对目的Web日志分析的两种无监督神经网络(NN)学习算法的使用:自组织图(SOM)和改进的自适应共振理论2(改进的ART2)。特别是,通过使用SOM和经过修改的ART2,我们的工作旨在基于访问者的浏览行为来更好地了解访问者对公共网站的类型和分布,以及调查相对差异和/或恶意网络抓取工具与其他非恶意访客组之间的相似性。我们的研究结果表明,即使恶意网络抓取者和其他访问者群体之间有明显的区分,但52%的恶意抓取者表现出非常“类似于人的”浏览行为,因此对未来的网络构成了特殊的挑战现场安全系统。此外,我们显示出表现出非常“类人”浏览行为的恶意爬网程序的某些特征值与人类访问者的特征值没有显着差异。此外,我们显示Google,MSN和Yahoo搜寻器表现出独特的搜寻行为。

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