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Phishing page detection via learning classifiers from page layout feature

机译:网络钓鱼页面通过来自页面布局功能的学习分类器

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摘要

The web technology has become the cornerstone of a wide range of platforms, such as mobile services and smart Internet-of-things (IoT) systems. In such platforms, users' data are aggregated to a cloud-based platform, where web applications are used as a key interface to access and configure user data. Securing the web interface requires solutions to deal with threats from both technical vulnerabilities and social factors. Phishing attacks are one of the most commonly exploited vectors in social engineering attacks. The attackers use web pages visually mimicking legitimate web sites, such as banking and government services, to collect users' sensitive information. Existing phishing defense mechanisms based on URLs or page contents are often evaded by attackers. Recent research has demonstrated that visual layout similarity can be used as a robust basis to detect phishing attacks. In particular, features extracted from CSS layout files can be used to measure page similarity. However, it needs human expertise in specifying how to measure page similarity based on such features. In this paper, we aim to enable automated page-layout-based phishing detection techniques using machine learning techniques. We propose a learning-based aggregation analysis mechanism to decide page layout similarity, which is used to detect phishing pages. We prototype our solution and evaluate four popular machine learning classifiers on their accuracy and the factors affecting their results.
机译:Web技术已成为广泛的平台的基石,例如移动服务和智能互联网(IOT)系统。在这种平台中,用户的数据被聚合到基于云的平台,其中Web应用程序用作访问和配置用户数据的密钥接口。保护Web界面需要解决方案处理技术漏洞和社会因素的威胁。网络钓鱼攻击是社会工程攻击中最常用的传感器之一。攻击者使用Web页面视觉模仿合法的网站,例如银行和政府服务,以收集用户的敏感信息。基于URL或页面内容的现有网络钓鱼防御机制通常由攻击者逃避。最近的研究表明,视觉布局相似度可用作检测网络钓鱼攻击的强大依据。特别地,从CSS布局文件中提取的功能可用于测量页面相似度。但是,它需要人类的专业知识,指定如何根据此类功能衡量页面相似度。在本文中,我们的目标是使用机器学习技术启用基于自动页面布局的网络钓鱼检测技术。我们提出了一种基于学习的聚合分析机制来决定页面布局相似度,用于检测网络钓鱼页面。我们原型提出我们的解决方案,并评估了四种流行的机器学习分类器的准确性和影响结果的因素。

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