基于混合特征的网络钓鱼检测智能学习架构

Yu-Hung Chen, Jiann-Liang Chen
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引用次数: 2

摘要

本研究提出了一种新的机器学习架构,该架构使用深度学习技术从网页结构中提取特征,并构建网络钓鱼检测模型。黑客可以通过各种互联网技术进行犯罪。近年来,网络钓鱼事件日益频繁,信息技术的快速发展使黑客能够开发出更高级的网络钓鱼攻击。此外,网络钓鱼工具包的发布,即软件工具的集合,使具有最低技术技能的人更容易发起自己的网络钓鱼攻击。因此,必须更加重视预防此类攻击。防范钓鱼网站有多方面的内容,包括用户培训、公众意识、技术安全措施等。在本研究中,我们进一步改进了网络钓鱼工具的网络钓鱼检测。本研究提出将HTML结构特征与AI@ntiPhish1.0提出的特征相结合来训练网络钓鱼检测模型。相关实验结果表明,将AI@ntiPhish1.0特征与提取的HTML结构特征相结合,可以更有效地检测出钓鱼工具,准确率从82%提高到87.2%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Learning Architecture with Hybrid Features for Phishing Detection
This study proposes a novel machine learning architecture that uses deep learning technology to extract features from the structure of a web page and construct a model for phishing detection. Hackers can commit crimes through a variety of Internet technologies. In recent years, phishing incidents have become more frequent, and the rapid development of information technology has enabled hackers to develop more advanced phishing attacks. Furthermore, the release of phishing toolkits, which are collections of software tools, make it easier for people with minimal technical skills to launch their own phishing attacks. Therefore, more attention must be paid to the prevention of such attacks. Protection from phishing websites has various aspects, including user training, public awareness, technical security measures and others. In this research, we further improve the phishing detection on phishing kits. This research proposes to use the combination HTML structural feature with the features proposed by AI@ntiPhish1.0 to train the phishing detection model. Relevant experimental results demonstrate that the combination of AI@ntiPhish1.0 features with extracted HTML structural features is more effective on detecting the phishing kits, increasing the accuracy thereof from 82% to 87.2%.
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