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Probabilistic Inference on Integrity for Access Behavior Based Malware Detection

机译:基于访问行为的恶意软件检测的完整性概率推断

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Integrity protection has proven an effective way of malware detection and defense. Determining the integrity of subjects (programs) and objects (files and registries) plays a fundamental role in integrity protection. However, the large numbers of subjects and objects, and intricate behaviors place burdens on revealing their integrities either manually or by a set of rules. In this paper, we propose a probabilistic model of integrity in modern operating system. Our model builds on two primary security policies, "no read down" and "no write up", which make connections between observed access behaviors and the inherent integrity ordering between pairs of subjects and objects. We employ a message passing based inference to determine the integrity of subjects and objects under a probabilistic graphical model. Furthermore, by leveraging a statistical classifier, we build an integrity based access behavior model for malware detection. Extensive experimental results on a real-world dataset demonstrate that our model is capable of detecting 7,257 malware samples from 27,840 benign processes at 99.88 % true positive rate under 0.1 % false positive rate. These results indicate the feasibility of our probabilistic integrity model.
机译:完整性保护已被证明是恶意软件检测和防御的有效方法。确定主题(程序)和对象(文件和注册表)的完整性在完整性保护中起着根本作用。但是,大量的主题和对象以及复杂的行为给手动或通过一组规则揭示其完整性带来了负担。在本文中,我们提出了现代操作系统中完整性的概率模型。我们的模型建立在两个主要的安全策略上,即“不读”和“不写”,这两个策略在观察到的访问行为与对象和对象对之间固有的完整性排序之间建立了联系。我们采用基于消息传递的推理来确定概率图形模型下主题和对象的完整性。此外,通过利用统计分类器,我们为恶意软件检测建立了基于完整性的访问行为模型。在真实数据集上的大量实验结果表明,我们的模型能够以99.88%的真实阳性率和0.1%的假阳性率检测来自27,840个良性过程的7,257个恶意软件样本。这些结果表明我们的概率完整性模型的可行性。

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