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On the classification of Microsoft-Windows ransomware using hardware profile

机译:在使用硬件配置文件的Microsoft-Windows Ransomware的分类

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Due to the expeditious inclination of online services usage, the incidents of ransomware proliferation being reported are on the rise. Ransomware is a more hazardous threat than other malware as the victim of ransomware cannot regain access to the hijacked device until some form of compensation is paid. In the literature, several dynamic analysis techniques have been employed for the detection of malware including ransomware; however, to the best of our knowledge, hardware execution profile for ransomware analysis has not been investigated for this purpose, as of today. In this study, we show that the true execution picture obtained via a hardware execution profile is beneficial to identify the obfuscated ransomware too. We evaluate the features obtained from hardware performance counters to classify malicious applications into ransomware and non-ransomware categories using several machine learning algorithms such as Random Forest, Decision Tree, Gradient Boosting, and Extreme Gradient Boosting. The employed data set comprises 80 ransomware and 80 non-ransomware applications, which are collected using the VirusShare platform. The results revealed that extracted hardware features play a substantial part in the identification and detection of ransomware with F-measure score of 0.97 achieved by Random Forest and Extreme Gradient Boosting.
机译:由于在线服务使用的迅速倾向,报告的赎金软件增殖事件正在上升。 Ransomware是比其他恶意软件更具危险的威胁,因为勒索软件的受害者无法重新获得对劫持设备的访问,直到某些形式的补偿。在文献中,已经采用了几种动态分析技术来检测恶意软件,包括勒索软件;但是,据我们所知,截至目前的目的,尚未调查用于赎金软件分析的硬件执行配置文件。在这项研究中,我们表明,通过硬件执行配置文件获得的真实执行图片有利于识别混淆的勒索软件。我们评估从硬件性能计数器获得的功能,将恶意应用程序分类为使用多个机器学习算法(如随机林,决策树,渐变升值和极端梯度提升)的机器学习算法对勒索软件和非RansomWare类别进行分类为勒索省软件和非Ransomware类别。所采用的数据集包括80个勒索软件和80个非RansomWare应用程序,该应用程序是使用VirusShare平台收集的。结果表明,提取的硬件特征在识别和检测中,在识别和检测中,勒索沃特的识别和检测是由随机森林和极端梯度升压实现的0.97的F测量得分。

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