HARD-Lite: A Lightweight Hardware Anomaly Realtime Detection Framework Targeting Ransomware

Chutitep Woralert, Chen Liu, Zander Blasingame
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Abstract

Recent years have witnessed a surge in ransomware attacks. Especially, many a new variant of ransomware has continued to emerge, employing more advanced techniques distributing the payload while avoiding detection. This renders the traditional static ransomware detection mechanism ineffective. In this paper, we present our Hardware Anomaly Realtime Detection - Lightweight (HARD-Lite) framework that employs semi-supervised machine learning method to detect ransomware using low-level hardware information. By using an LSTM network with a weighted majority voting ensemble and exponential moving average, we are able to take into consideration the temporal aspect of hardware-level information formed as time series in order to detect deviation in system behavior, thereby increasing the detection accuracy whilst reducing the number of false positives. Testing against various ransomware across multiple families, HARD-Lite has demonstrated remarkable effectiveness, detecting all cases tested successfully. What's more, with a hierarchical design that distributing the classifier from the user machine that is under monitoring to a server machine, Hard-Lite enables good scalability as well.
针对勒索软件的轻量级硬件异常实时检测框架
近年来,勒索软件攻击激增。特别是,许多新的勒索软件变种不断出现,采用更先进的技术分发有效载荷,同时避免检测。这使得传统的静态勒索软件检测机制失效。在本文中,我们提出了我们的硬件异常实时检测-轻量级(HARD-Lite)框架,该框架采用半监督机器学习方法使用低级硬件信息检测勒索软件。通过使用加权多数投票集合和指数移动平均的LSTM网络,我们能够考虑作为时间序列形成的硬件级信息的时间方面,以便检测系统行为的偏差,从而提高检测精度,同时减少误报的数量。针对多个家庭的各种勒索软件进行的测试表明,HARD-Lite具有显着的有效性,可以成功检测所有测试案例。此外,通过分层设计将分类器从被监视的用户机器分发到服务器机器,Hard-Lite还支持良好的可伸缩性。
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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