Phishing Detection Using URL-based XAI Techniques

P. R. G. Hernandes, Camila P. Floret, Katia F. Cardozo De Almeida, Vinícius Camargo Da Silva, J. Papa, K. Costa
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引用次数: 5

Abstract

The Internet has been growing exponentially and expanding facilities, such as payments and online purchases. Likewise, the number of criminals using electronic devices to commit theft or hijacking of information has increased. Many scams still require interaction with the victim, who in many cases is persuaded to access a malicious link sent by email, which is classified as phishing. This technique is one of the biggest threats for users and one of the most efficient for criminals. Several studies show different sorts of protection using Artificial Intelligence, which despite being very efficient, do not describe the reasons for categorizing them or using a URL as phishing. This paper focuses on detecting phishing using explainable techniques, i.e., Local Interpretable Model-Agnostic Explanations and Explainable Boosting Machine, to lighten up new advances and future works in the area.
使用基于url的XAI技术进行网络钓鱼检测
互联网呈指数级增长,支付和在线购物等设施也在不断扩大。同样,使用电子设备进行盗窃或劫持信息的犯罪分子数量也有所增加。许多骗局仍然需要与受害者互动,在许多情况下,受害者被说服访问通过电子邮件发送的恶意链接,这被归类为网络钓鱼。这种技术对用户来说是最大的威胁之一,对犯罪分子来说也是最有效的方法之一。几项研究表明,使用人工智能的不同类型的保护,尽管非常有效,但没有描述将它们分类或使用URL作为网络钓鱼的原因。本文重点介绍了利用可解释技术检测网络钓鱼,即局部可解释模型不可知论解释和可解释增强机,以阐明该领域的新进展和未来的工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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