使用人类行为自动化检测钓鱼网站

Routhu Srinivasa Rao, A. R. Pais
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引用次数: 38

摘要

本文提出了一种基于人在面对虚假网站时的行为来检测网络钓鱼攻击的技术。部分在线用户在提交实际凭据之前,向登录页面提交假凭据。他/她观察结果页面的登录状态,以检查网站是假的还是合法的。我们在我们的应用程序(FeedPhish)中自动执行相同的行为,它将假值提供给登录页面。如果网页登录成功,则将其分类为网络钓鱼,否则将进行进一步的启发式过滤。如果可疑网站通过了所有启发式过滤器,那么该网站将被归类为合法网站。实验结果表明,我们的应用程序的真阳性率为97.61%,真阴性率为94.37%,总体准确率为96.38%。我们的应用程序既不需要第三方服务,也不需要事先了解web历史,url的白名单或黑名单。它不仅能够检测零日网络钓鱼攻击,还能够检测托管在受损域上的网络钓鱼网站。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Phishing Websites using Automation of Human Behavior
In this paper, we propose a technique to detect phishing attacks based on behavior of human when exposed to fake website. Some online users submit fake credentials to the login page before submitting their actual credentials. He/She observes the login status of the resulting page to check whether the website is fake or legitimate. We automate the same behavior with our application (FeedPhish) which feeds fake values into login page. If the web page logs in successfully, it is classified as phishing otherwise it undergoes further heuristic filtering. If the suspicious site passes through all heuristic filters then the website is classified as a legitimate site. As per the experimentation results, our application has achieved a true positive rate of 97.61%, true negative rate of 94.37% and overall accuracy of 96.38%. Our application neither demands third party services nor prior knowledge like web history, whitelist or blacklist of URLS. It is able to detect not only zero-day phishing attacks but also detects phishing sites which are hosted on compromised domains.
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