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Evading behavioral classifiers: a comprehensive analysis on evading ransomware detection techniques

机译:规避行为分类器:规避勒索软件检测技术的综合分析

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Recent progress in machine learning has led to promising results in behavioral malware detection. Behavioral modeling identifies malicious processes via features derived by their runtime behavior. Behavioral features hold great promise as they are intrinsically related to the functioning of each malware, and are therefore considered difficult to evade. Indeed, while a significant amount of results exists on evasion of static malware features, evasion of dynamic features has seen limited work. This paper examines the robustness of behavioral ransomware detectors to evasion and proposes multiple novel techniques to evade them. Ransomware behavior differs significantly from that of benign processes, making it an ideal best case for behavioral detectors, and a difficult candidate for evasion. We identify and propose a set of novel attacks that distribute the overall malware workload across a small set of independent, cooperating processes in order to avoid the generation of significant behavioral features. Our most effective attack decreases the accuracy of a state-of-the-art classifier from 98.6 to 0 using only 18 cooperating processes. Furthermore, we show our attacks to be effective against commercial ransomware detectors in a black-box setting. Finally, we evaluate a detector designed to identify our most effective attack, as well as discuss potential directions to mitigate our most advanced attack.
机译:机器学习的最新进展在行为恶意软件检测方面取得了可喜的成果。行为建模通过恶意进程的运行时行为派生的特征来识别恶意进程。行为特征具有很大的前景,因为它们与每个恶意软件的功能有着内在的联系,因此被认为难以规避。事实上,虽然在规避静态恶意软件功能方面存在大量结果,但规避动态功能的工作有限。本文研究了行为勒索软件检测器对规避的鲁棒性,并提出了多种新的技术来规避它们。勒索软件行为与良性进程的行为有很大不同,使其成为行为检测器的理想最佳案例,也是难以规避的候选者。我们识别并提出了一组新型攻击,这些攻击将整个恶意软件工作负载分布在一小组独立的协作进程中,以避免产生重要的行为特征。我们最有效的攻击仅使用 18 个协作过程将最先进的分类器的准确率从 98.6% 降低到 0%。此外,我们证明我们的攻击在黑匣子环境中对商业勒索软件检测器有效。最后,我们评估了一种检测器,旨在识别我们最有效的攻击,并讨论缓解我们最高级攻击的潜在方向。

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