分析受感染网页内容在检测恶意网页中的新特征

Javad Hajian Nezhad, M. V. Jahan, Mohammad-Hassan Tayarani-Najaran, Zohre Sadrnezhad
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引用次数: 12

摘要

web标准和技术的最新改进使攻击者能够使用新方法隐藏和混淆感染代码,从而逃避安全过滤器。在本文中,我们研究了机器学习技术在恶意网页检测中的应用。为了检测恶意网页,我们提出并分析了一套新的特性,包括HTML、JavaScript (jQuery库)和XSS攻击。所提出的特征在一个数据集上进行评估,该数据集是由爬虫从恶意网络域、IP和地址黑名单中收集的。为了评估的目的,我们使用了许多机器学习算法。实验结果表明,使用所提出的特征集,C4.5-Tree算法的准确率为97.61%,而F1-measure的准确率为96.75%。我们还对功能的质量进行排名。实验结果表明,所提出的特征中有9个是20个最佳判别特征之一。
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Analyzing new features of infected web content in detection of malicious web pages
Recent improvements in web standards and technologies enable the attackers to hide and obfuscate infectious codes with new methods and thus escaping the security filters. In this paper, we study the application of machine learning techniques in detecting malicious web pages. In order to detect malicious web pages, we propose and analyze a novel set of features including HTML, JavaScript (jQuery library) and XSS attacks. The proposed features are evaluated on a data set that is gathered by a crawler from malicious web domains, IP and address black lists. For the purpose of evaluation, we use a number of machine learning algorithms. Experimental results show that using the proposed set of features, the C4.5-Tree algorithm offers the best performance with 97.61% accuracy, and F1-measure has 96.75% accuracy. We also rank the quality of the features. Experimental results suggest that nine of the proposed features are among the twenty best discriminative features.
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