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Automatically determining phishing campaigns using the USCAP methodology

机译:使用USCAP方法自动确定网络钓鱼活动

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Phishing fraudsters attempt to create an environment which looks and feels like a legitimate institution, while at the same time attempting to bypass filters and suspicions of their targets. This is a difficult compromise for the phishers and presents a weakness in the process of conducting this fraud. In this research, a methodology is presented that looks at the differences that occur between phishing websites from an authorship analysis perspective and is able to determine different phishing campaigns undertaken by phishing groups. The methodology is named USCAP, for Unsupervised SCAP, which builds on the SCAP methodology from supervised authorship and extends it for unsupervised learning problems. The phishing website source code is examined to generate a model that gives the size and scope of each of the recognized phishing campaigns. The USCAP methodology introduces the first time that phishing websites have been clustered by campaign in an automatic and reliable way, compared to previous methods which relied on costly expert analysis of phishing websites. Evaluation of these clusters indicates that each cluster is strongly consistent with a high stability and reliability when analyzed using new information about the attacks, such as the dates that the attack occurred on. The clusters found are indicative of different phishing campaigns, presenting a step towards an automated phishing authorship analysis methodology.
机译:网络钓鱼欺诈者试图创建一个看起来和感觉像合法机构的环境,同时试图绕过过滤器和对其目标的怀疑。对于网络钓鱼者而言,这是一个艰难的妥协,并且在进行这种欺诈的过程中存在弱点。在这项研究中,提出了一种方法,该方法可以从作者分析的角度查看网络钓鱼网站之间的差异,并能够确定网络钓鱼组织采取的不同网络钓鱼活动。该方法被称为USCAP,用于无监督的SCAP,该方法基于有监督的作者身份建立在SCAP的方法之上,并将其扩展到无监督的学习问题。检查网络钓鱼网站的源代码以生成一个模型,该模型给出每个已识别网络钓鱼活动的大小和范围。与以前的依靠钓鱼网站昂贵专家分析的方法相比,USCAP方法首次介绍了网络钓鱼网站是通过竞选活动以一种自动,可靠的方式进行聚类的。对这些群集的评估表明,当使用有关攻击的新信息(例如,攻击发生的日期)进行分析时,每个群集都具有高度的稳定性和可靠性,这是高度一致的。找到的集群表明了不同的网络钓鱼活动,这表明朝着自动网络钓鱼作者分析方法迈出了一步。

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