A COMPARATIVE ANALYSIS OF DIFFERENT FEATURE SET ON THE PERFORMANCE OF DIFFERENT ALGORITHMS IN PHISHING WEBSITE DETECTION

H. Musa, Bala Modi, Ismail Abdulkarim Adamu, Ali Ahmad Aminu, H. Adamu, Yahaya Ajiya
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引用次数: 4

Abstract

Reducing the risk pose by phishers and other cybercriminals in the cyber space requires a robust and automatic means of detecting phishing websites, since the culprits are constantly coming up with new techniques of achieving their goals almost on daily basis. Phishers are constantly evolving the methods they used for luring user to revealing their sensitive information. Many methods have been proposed in past for phishing detection. But the quest for better solution is still on. This research covers the development of phishing website model based on different algorithms with different set of features in order to investigate the most significant features in the dataset.
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不同特征集的比较分析不同算法在钓鱼网站检测中的性能
降低网络钓鱼者和其他网络罪犯在网络空间中构成的风险需要一种强大而自动的检测网络钓鱼网站的方法,因为罪犯几乎每天都在不断想出实现目标的新技术。网络钓鱼者不断发展他们用来引诱用户泄露敏感信息的方法。过去已经提出了许多用于网络钓鱼检测的方法。但更好的解决方案仍在探索中。本研究涵盖了基于不同算法和不同特征集的钓鱼网站模型的开发,以研究数据集中最重要的特征。
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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