使用url检测运行时网络钓鱼活动的基于学习的模型

Surya Srikar Sirigineedi, Jayesh Soni, Himanshu Upadhyay
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引用次数: 9

摘要

网络钓鱼网站是一种欺诈性网站,它冒充受信任的一方来获取个人或组织的敏感信息。传统上,网络钓鱼网站检测是通过使用黑名单数据库来完成的。然而,由于当前全球网络和通信技术的快速发展,网站数量众多,由于每秒都有新的网站创建,因此很难用传统的方法进行分类。在本文中,我们提出了一个实时的反网络钓鱼系统。在第一步,我们提取一个网站的词法和基于主机的属性。第二步,我们结合URL(统一资源定位器)特征、NLP和基于主机的属性来训练机器学习和深度学习模型。我们的检测模型能够检测到网络钓鱼url,检测率为94.89%。
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Learning-based models to detect runtime phishing activities using URLs
Phishing websites are fraudulent sites that impersonate a trusted party to gain access to sensitive information of an individual person or organization. Traditionally, phishing website detection is done through the usage of blacklist databases. However, due to the current, rapid development of global networking and communication technologies, there are numerous websites and it has become difficult to classify based on traditional methods since new websites are created every second. In this paper, we are proposing a real-time, anti-phishing system. In the first step, we extract the lexical and host-based properties of a website. In the second step, we combine URL (Uniform Resource Locator) features, NLP and host-based properties to train the machine learning and deep learning models. Our detection model is able to detect phishing URLs with a detection rate of 94.89%.
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