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Phishing detection: A recent intelligent machine learning comparison based on models content and features

机译:网络钓鱼检测:基于模型内容和功能的最新智能机器学习比较

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In the last decade, numerous fake websites have been developed on the World Wide Web to mimic trusted websites, with the aim of stealing financial assets from users and organizations. This form of online attack is called phishing, and it has cost the online community and the various stakeholders hundreds of million Dollars. Therefore, effective counter measures that can accurately detect phishing are needed. Machine learning (ML) is a popular tool for data analysis and recently has shown promising results in combating phishing when contrasted with classic anti-phishing approaches, including awareness workshops, visualization and legal solutions. This article investigates ML techniques applicability to detect phishing attacks and describes their pros and cons. In particular, different types of ML techniques have been investigated to reveal the suitable options that can serve as anti-phishing tools. More importantly, we experimentally compare large numbers of ML techniques on real phishing datasets and with respect to different metrics. The purpose of the comparison is to reveal the advantages and disadvantages of ML predictive models and to show their actual performance when it comes to phishing attacks. The experimental results show that Covering approach models are more appropriate as anti-phishing solutions, especially for novice users, because of their simple yet effective knowledge bases in addition to their good phishing detection rate.
机译:在过去的十年中,互联网上已经开发了许多假冒网站来模仿可信任的网站,目的是从用户和组织中窃取金融资产。这种在线攻击形式被称为网络钓鱼,它已经使在线社区和各种利益相关者损失了数亿美元。因此,需要能够准确检测网络钓鱼的有效对策。机器学习(ML)是一种流行的数据分析工具,与经典的反网络钓鱼方法(包括提高认识的研讨会,可视化和法律解决方案)相比,最近在反网络钓鱼方面已显示出令人鼓舞的结果。本文研究了ML技术在检测网络钓鱼攻击中的适用性,并描述了它们的优缺点。特别是,已经研究了不同类型的ML技术,以揭示可以用作反网络钓鱼工具的合适选项。更重要的是,我们在实际的网络钓鱼数据集上并针对不同的指标实验性地比较了大量的机器学习技术。进行比较的目的是揭示ML预测模型的优缺点,并展示其在网络钓鱼攻击中的实际性能。实验结果表明,Covering方法模型更适合作为反网络钓鱼解决方案,特别是对于新手用户,这是因为它们具有简单但有效的知识库,而且具有良好的网络钓鱼检测率。

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