A Smart Model for Web Phishing Detection Based on New Proposed Feature Selection Technique

M. El-Rashidy
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引用次数: 6

Abstract

Web-phishing attacks are one of the most serious cybercrime. It enables hackers to access the devices of many users and spy on their personal data such as passwords and credit card details. Hackers use a lot of tricks through the internet, which make users to share data, download files or open links that attack a computer. This research proposes meta-heuristic based approach to protect the internet users from the web-phishing. It consists of three phases, the first phase uses a new proposed method for evaluating and ranking the features of URL, HTML and JavaScript code, text, images and domain name of the web page. The second phase extracts the effective subset of the ranked features that achieves the highest classification accuracy of the web-phishing. The third phase constructs the Random forest classifier training by data features of the extracted subset. The new proposed method of the feature selection achieved the highest classification accuracy compared to the correlation feature selection, information gain, principle component analysis, and Relief feature selection algorithms. The proposed methodology of the web-phishing detection was also evaluated, it obtained the highest classification accuracy at the least possible time compared to the adaptive Neuro-fuzzy inference system.
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基于特征选择技术的网络钓鱼智能检测模型
网络钓鱼攻击是最严重的网络犯罪之一。它使黑客能够访问许多用户的设备,并窥探他们的个人数据,如密码和信用卡详细信息。黑客通过互联网使用很多技巧,让用户共享数据、下载文件或打开攻击计算机的链接。本研究提出了一种基于元启发式的网络钓鱼保护方法。该方法分为三个阶段,第一阶段采用一种新的方法对网页的URL、HTML和JavaScript代码、文本、图像和域名的特征进行评价和排序。第二阶段提取排序特征的有效子集,达到最高的网络钓鱼分类精度。第三阶段根据提取子集的数据特征构建随机森林分类器训练。与相关特征选择、信息增益、主成分分析和浮雕特征选择算法相比,本文提出的特征选择方法具有最高的分类精度。本文还对所提出的网络钓鱼检测方法进行了评价,与自适应神经模糊推理系统相比,该方法在最短的时间内获得了最高的分类准确率。
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