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Improving the phishing website detection using empirical analysis of Function Tree and its variants

机译:使用函数树及其变体的实证分析改善网络钓鱼网站检测

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摘要

The phishing attack is one of the most complex threats that have put internet users and legitimate web resource owners at risk. The recent rise in the number of phishing attacks has instilled distrust in legitimate internet users, making them feel less safe even in the presence of powerful antivirus apps. Reports of a rise in financial damages as a result of phishing website attacks have caused grave concern. Several methods, including blacklists and machine learning-based models, have been proposed to combat phishing website attacks. The blacklist anti-phishing method has been faulted for failure to detect new phishing URLs due to its reliance on compiled blacklisted phishing URLs. Many ML methods for detecting phishing websites have been reported with relatively low detection accuracy and high false alarm. Hence, this research proposed a Functional Tree (FT) based meta-learning models for detecting phishing websites. That is, this study investigated improving the phishing website detection using empirical analysis of FT and its variants. The proposed models outperformed baseline classifiers, meta-learners and hybrid models that are used for phishing websites detection in existing studies. Besides, the proposed FT based meta-learners are effective for detecting legitimate and phishing websites with accuracy as high as 98.51% and a false positive rate as low as 0.015. Hence, the deployment and adoption of FT and its meta-learner variants for phishing website detection and applicable cybersecurity attacks are recommended.
机译:网络钓鱼攻击是将互联网用户和合法的Web资源所有者面临风险的最复杂的威胁之一。网络钓鱼袭击数量的最近崛起已经灌输了合法互联网用户的不信任,即使在存在强大的防病毒应用程序中,也让他们感到不太安全。由于网络钓鱼网站攻击而导致金融损害损失的报告导致严重关切。已经提出了几种方法,包括黑名单和基于机器学习的模型,用于打击网络钓鱼网站攻击。 Blacklist Anti-Phishing方法已出现故障,无法检测到新的网络钓鱼URL,因为它依赖于编译的黑名单网络钓鱼URL。已经报道了许多用于检测网络钓鱼网站的ML方法,具有相对较低的检测精度和高误报。因此,该研究提出了一种用于检测网络钓鱼网站的基于功能树(FT)的元学习模型。也就是说,本研究通过对FT及其变体的实证分析调查了改善网络钓鱼网站检测。所提出的模型表现出基线分类器,元学习者和混合模型用于网络钓鱼网站在现有研究中检测。此外,所提出的FT基于FT的META-MEDERS对于检测合法和网络钓鱼网站的精确度高达98.51%,假阳性率低至0.015。因此,建议使用FT及其META学习者的部署和采用,用于网络钓鱼网站检测和适用的网络安全攻击。

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