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Probabilistic Program Modeling for High-Precision Anomaly Classification

机译:高精度异常分类的概率程序建模

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The trend constantly being observed in the evolution of advanced modern exploits is their growing sophistication in stealthy attacks. Code-reuse attacks such as return-oriented programming allow intruders to execute mal-intended instruction sequences on a victim machine without injecting external code. We introduce a new anomaly-based detection technique that probabilistically models and learns a program's control flows for high-precision behavioral reasoning and monitoring. Our prototype in Linux is named STILO, which stands for STatically InitiaLized markOv. Experimental evaluation involves real-world code-reuse exploits and over 4,000 testcases from server and utility programs. STILO achieves up to 28-fold of improvement in detection accuracy over the state-of-the-art HMM-based anomaly detection. Our findings suggest that the probabilistic modeling of program dependences provides a significant source of behavior information for building high-precision models for real-time system monitoring.
机译:在先进的现代攻击技术的发展中不断观察到的趋势是,它们在隐形攻击中的日趋成熟。代码重用攻击(如面向返回的编程)使入侵者可以在受害者计算机上执行意想不到的指令序列,而无需注入外部代码。我们引入了一种新的基于异常的检测技术,该技术可以概率地建模和学习程序的控制流,以进行高精度的行为推理和监视。我们在Linux中创建的原型称为STILO,代表STatically InitiaLized markOv。实验评估涉及实际的代码重用漏洞利用以及来自服务器和实用程序的4,000多个测试用例。与基于HMM的最新异常检测相比,STILO的检测精度提高了多达28倍。我们的发现表明,程序依赖性的概率建模为构建用于实时系统监视的高精度模型提供了重要的行为信息来源。

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