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Classification of Exploit-Kit behaviors via machine learning approach

机译:通过机器学习方法对Exploit-Kit行为进行分类

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An Exploit-Kit (EK) is the cyber attacking tool which targets in finding vulnerabilities appeared on a web browser instance such as web-plugins, add-on instances usually installed in a web browser. Such instances may send some suitable malware payload through the vulnerabilities they found. This kind of such cyber-attack is known as the drive-by-download attack where malware downloading do not require any interaction from users. In addition, EK can do self-protection by imitating a benign website or responding to end-users with HTTP 404 error code whenever it encountered an unsupported target web browser. As a result, detecting EK requires a lot of effort. However, when an EK launches an attack, there are some patterns of interactions between a host and a victim. In this work, we obtain a set of data from www.malware-traffic-analysis.net and analyze those interactions in order to identify a set of features. We use such features to build a model for classifying interaction patterns of each EK type. Our experiments show that, with 5,743 network flows and 45 features, our model using Decision tree approach can classify EK traffic and EK type with accuracy of 97.74% and 97.11% respectively. In conclusion, our proposed work can help detect the behavior of EK with high accuracy.
机译:Exploit-Kit(EK)是一种网络攻击工具,其目的是查找在Web浏览器实例中出现的漏洞,例如Web插件,通常安装在Web浏览器中的附加实例。这样的实例可能会通过发现的漏洞发送一些合适的恶意软件有效负载。这种网络攻击称为“下载驱动”攻击,其中恶意软件下载不需要用户的任何交互。此外,EK可以在遇到不受支持的目标Web浏览器时通过模仿良性网站或使用HTTP 404错误代码响应最终用户来进行自我保护。结果,检测EK需要很多努力。但是,当EK发动攻击时,宿主与受害者之间会有一些交互方式。在这项工作中,我们从www.malware-traffic-analysis.net获得了一组数据,并分析了这些交互作用以识别一组功能。我们使用这些功能来构建模型,以对每种EK类型的交互模式进行分类。我们的实验表明,利用5,743个网络流和45个功能,我们的决策树方法模型可以对EK流量和EK类型进行分类,准确度分别为97.74%和97.11%。总之,我们提出的工作可以帮助高精度地检测EK的行为。

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