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On the Detection of Malicious Behaviors against Introspection Using Hardware Architectural Events

机译:利用硬件体系结构事件检测针对自省的恶意行为

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The arms race between offense and defense in the cloud impels the innovation of techniques for monitoring attacks and unauthorized activities. The promising technique of virtual machine introspection (VMI) becomes prevalent for its tamper-resistant capability. However, some elaborate exploitations are capable of invalidating VMI-based tools by breaking the assumption of a trusted guest kernel. To achieve a more reliable and robust introspection, we introduce a practical approach to monitor and detect attacks that attempt to subvert VMI in this paper. Our approach combines supervised machine learning and hardware architectural events to identify those malicious behaviors which are targeted at VMI techniques. To demonstrate the feasibility, we implement a prototype named HyperMon on the Xen hypervisor. The results of our evaluation show the effectiveness of HyperMon in detecting malicious behaviors with an average accuracy of 90.51% (AUC).
机译:云计算中的进攻与防御之间的军备竞赛促使监视攻击和未经授权的活动的技术创新。虚拟机自检(VMI)的有前途的技术因其防篡改功能而盛行。但是,某些精心设计的利用能够打破可信客户机内核的假设,从而使基于VMI的工具无效。为了实现更可靠,更强大的自省,我们在本文中引入了一种实用的方法来监视和检测试图颠覆VMI的攻击。我们的方法结合了监督式机器学习和硬件体系结构事件,以识别针对VMI技术的恶意行为。为了证明可行性,我们在Xen虚拟机管理程序上实现了一个名为HyperMon的原型。我们的评估结果表明,HyperMon在检测恶意行为方面的有效性为90.51%(AUC)。

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