网络钓鱼检测和预防使用Chrome扩展

M. Rose, N. Basir, Nur Fatin Nabila Binti Mohd Rafei Heng, N. J. Zaizi, M. Saudi
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引用次数: 3

摘要

在2019冠状病毒病大流行期间,包括网络钓鱼活动在内的网络攻击数量急剧增加。目前已经开发了许多网络钓鱼检测的技术方案,但这些方法要么不成功,要么无法有效地识别网络钓鱼页面和检测恶意代码。缺点之一是检测精度较差,对新的网络钓鱼连接的适应性较低。反网络钓鱼解决方案失败的另一个原因是任意选择基于url的分类特征,这可能会对检测产生错误的结果。因此,本文设计了一种网络钓鱼智能检测与预防模型。该模型采用了一种自毁检测算法,其中使用了机器学习特别是监督学习算法。算法中采用的所有规则都将关注基于url的web特征,攻击者依赖这些特征将受害者重定向到模拟站点。使用了来自各种来源的数据集,如Phish Tank和UCI机器学习存储库,并在受控的实验室环境中进行了测试。在此基础上,开发了chrome扩展的网络钓鱼检测功能,以帮助用户在访问非法网站时采取适当的对策来防止网络钓鱼攻击,并使用户意识到网络钓鱼。相信这种智能网络钓鱼检测和预防模型能够防止欺诈和垃圾网站,减少每年出现的网络犯罪和网络危机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Phishing Detection and Prevention using Chrome Extension
During pandemic COVID-19 outbreaks, number of cyber-attacks including phishing activities have increased tremendously. Nowadays many technical solutions on phishing detection were developed, however these approaches were either unsuccessful or unable to identify phishing pages and detect malicious codes efficiently. One of the downside is due to poor detection accuracy and low adaptability to new phishing connections. Another reason behind the unsuccessful anti-phishing solutions is an arbitrary selected URL-based classification features which may produce false results to the detection. Therefore, in this work, an intelligent phishing detection and prevention model is designed. The proposed model employs a self-destruct detection algorithm in which, machine learning, especially supervised learning algorithm was used. All employed rules in algorithm will focus on URL-based web characteristic, which attackers rely upon to redirect the victims to the simulated sites. A dataset from various sources such as Phish Tank and UCI Machine Learning repository were used and the testing was conducted in a controlled lab environment. As a result, a chrome extension phishing detection were developed based on the proposed model to help in preventing phishing attacks with an appropriate countermeasure and keep users aware of phishing while visiting illegitimate websites. It is believed that this smart phishing detection and prevention model able to prevent fraud and spam websites and lessen the cyber-crime and cyber-crisis that arise from year to year.
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