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Towards Malware Detection via CPU Power Consumption: Data Collection Design and Analytics

机译:通过CPU功耗进行恶意软件检测:数据收集设计和分析

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This paper presents an experimental design and algorithm for power-based malware detection on general-purpose computers. Our design allows programmatic collection of CPU power profiles for a fixed set of non-malicious benchmarks, first running in an uninfected state and then in an infected state with malware running along with non-malicious software. To characterize power consumption profiles, we use both simple statistical and novel, sophisticated features. We propose an unsupervised, one-class anomaly detection ensemble and compare its perfor-mance with several supervised, kernel-based SVM classifiers (trained on clean and infected profiles) in detecting previously unseen malware. The anomaly detection system exhibits perfect detection when using all features across all benchmarks, with smaller false detection rate than the supervised classifiers. This paper provides a proof of concept that power-based malware detection is feasible for general-purpose computers and presents several future research steps toward that goal.
机译:本文提出了一种用于通用计算机上基于电源的恶意软件检测的实验设计和算法。我们的设计允许以编程的方式收集一组固定的非恶意基准测试的CPU电源配置文件,首先在未感染状态下运行,然后在恶意软件与非恶意软件一起运行的情况下处于感染状态。为了表征功耗曲线,我们同时使用了简单的统计信息和新颖,复杂的功能。我们提出了一种无监督的一类异常检测集合,并将其性能与几种受监督的基于内核的SVM分类器(在干净和受感染的配置文件上训练)进行检测,以检测以前看不见的恶意软件。当在所有基准中使用所有功能时,异常检测系统将显示出完美的检测结果,其误检率要低于监督分类器。本文提供了一种概念证明,即基于电源的恶意软件检测对于通用计算机是可行的,并提出了实现该目标的若干未来研究步骤。

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