基于自适应机器学习的混合特征网络钓鱼检测方法

Mohammad Mehdi Yadollahi, Farzaneh Shoeleh, Elham Serkani, Afsaneh Madani, Hossein Gharaee
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引用次数: 22

摘要

如今,随着万维网数量的显著增长,网络钓鱼是最常见的网络威胁之一。网络钓鱼攻击者总是使用新的(零日)和复杂的技术来欺骗在线客户。因此,反网络钓鱼系统必须是实时和快速的,并且还必须利用智能网络钓鱼检测解决方案。在此,我们开发了一个可靠的检测系统,可以自适应适应不断变化的环境和钓鱼网站。我们的方法是一种在线和功能丰富的机器学习技术来区分网络钓鱼和合法网站。由于所提出的方法从url和网页源代码中提取不同类型的区别特征,因此它完全是客户端解决方案,不需要第三方提供任何服务。实验结果表明,该反钓鱼系统具有很强的鲁棒性和竞争力,能够有效区分钓鱼网站和合法网站。
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An Adaptive Machine Learning Based Approach for Phishing Detection Using Hybrid Features
Nowadays, phishing is one of the most usual web threats with regards to the significant growth of the World Wide Web in volume over time. Phishing attackers always use new (zero-day) and sophisticated techniques to deceive online customers. Hence, it is necessary that the anti-phishing system be real-time and fast and also leverages from an intelligent phishing detection solution. Here, we develop a reliable detection system which can adaptively match the changing environment and phishing websites. Our method is an online and feature-rich machine learning technique to discriminate the phishing and legitimate websites. Since the proposed approach extracts different types of discriminative features from URLs and webpages source code, it is an entirely client-side solution and does not require any service from the third-party. The experimental results highlight the robustness and competitiveness of our anti-phishing system to distinguish the phishing and legitimate websites.
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