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SNIFFER: A High-Accuracy Malware Detector for Enterprise-Based Systems

机译:Sniffer:基于企业的系统的高精度恶意软件探测器

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In the continual battle between malware attacks and antivirus technologies, both sides strive to deploy their techniques at always lower layers in the software system stack. The goal is to monitor and control the software executing in the levels above their own deployment, to detect attacks or to defeat defenses. Recent antivirus solutions have gone even below the software, by enlisting hardware support. However, so far, they have only mimicked classic software techniques by monitoring software clues of an attack. As a result, malware can easily defeat them by employing metamorphic manifestation patterns. With this work, we propose a hardware-monitoring solution, SNIFFER, which tracks malware manifestations in system-level behavior, rather than code patterns, and it thus cannot be circumvented unless malware renounces its very nature, that is, to attack. SNIFFER leverages in-hardware feature monitoring, and uses machine learning to assess whether a system shows signs of an attack. Experiments with a virtual SNIFFER implementation, which supports 13 features and tests against five common network-based malicious behaviors, show that SNIFFER detects malware nearly 100% of the time, unless the malware aggressively throttle its attack. Our experiments also highlight the need for machine-learning classifiers employing a range of diverse system features, as many of the tested malware require multiple, seemingly disconnected, features for accurate detection.
机译:在恶意软件攻击和防病毒技术之间的持续争斗中,双方都努力在软件系统堆栈中的始终下层部署其技术。目标是监控和控制在自己部署的级别中执行的软件,以检测攻击或打败防御。最近的防病毒解决方案甚至在软件下面甚至在软件上消失了。然而,到目前为止,他们只通过监视攻击的软件线索模仿经典的软件技术。因此,恶意软件可以通过采用变质表现模式轻松打败它们。通过这项工作,我们提出了一个硬件监控解决方案,嗅探系统级行为中的恶意软件表现,而不是代码模式,除非恶意软件放大其非常自然,否则无法绕过其攻击。嗅探器利用硬件功能监控,并使用机器学习来评估系统是否显示攻击的迹象。具有虚拟嗅探器实现的实验,它支持13个功能和测试,针对五种常见的基于网络的恶意行为,显示嗅探器检测到近100%的恶意软件,除非恶意软件正在激进其攻击。我们的实验还突出了采用一系列不同系统功能的机器学习分类器的需求,因为许多测试恶意软件都需要多个看似断开的功能,以便精确检测。

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