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Learning to Detect Phishing Emails

机译:学习检测网络钓鱼电子邮件

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摘要

Each month, more attacks are launched with the aim of making web users believe that they are communicating with a trusted entity for the purpose of stealing account information, logon credentials, and identity information in general. This attack method, commonly known as "phishing," is most commonly initiated by sending out emails with links to spoofed websites that harvest information. We present a method for detecting these attacks, which in its most general form is an application of machine learning on a feature set designed to highlight user-targeted deception in electronic communication. This method is applicable, with slight modification, to detection of phishing websites, or the emails used to direct victims to these sites. We evaluate this method on a set of approximately 860 such phishing emails, and 6950 non-phishing emails, and correctly identify over 96% of the phishing emails while only mis-classifying on the order of 0.1% of the legitimate emails. We conclude with thoughts on the future for such techniques to specifically identify deception, specifically with respect to the evolutionary nature of the attacks and information available.
机译:每个月,都会发动更多攻击,目的是使网络用户相信他们正在与受信任的实体进行通信,目的是窃取帐户信息,登录凭据和身份信息。这种攻击方法通常称为“网络钓鱼”,通常是通过发送带有链接的电子邮件来启动的,这些链接指向收集信息的欺骗网站。我们提出了一种检测这些攻击的方法,它的最一般形式是机器学习在功能集上的应用,该功能集旨在突出电子通信中以用户为目标的欺骗。此方法(略有改动)适用于检测网络钓鱼网站或用于将受害者定向到这些网站的电子邮件。我们对大约860种此类网络钓鱼电子邮件和6950种非网络钓鱼电子邮件进行了评估,并正确识别了96%以上的网络钓鱼电子邮件,同时仅对0.1%的合法电子邮件进行了错误分类。我们以对此类技术的未来的思考作为结束,这些技术可以专门识别欺骗,尤其是关于攻击的进化性质和可用信息。

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