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Semantics-Based Online Malware Detection: Towards Efficient Real-Time Protection Against Malware

机译:基于语义的在线恶意软件检测:针对恶意软件的高效实时保护

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摘要

Recently, malware has increasingly become a critical threat to embedded systems, while the conventional software solutions, such as antivirus and patches, have not been so successful in defending the ever-evolving and advanced malicious programs. In this paper, we propose a hardware-enhanced architecture, GuardOL, to perform online malware detection. GuardOL is a combined approach using processor and field-programmable gate array (FPGA). Our approach aims to capture the malicious behavior (i.e., high-level semantics) of malware. To this end, we first propose the frequency-centric model for feature construction using system call patterns of known malware and benign samples. We then develop a machine learning approach (using multilayer perceptron) in FPGA to train classifier using these features. At runtime, the trained classifier is used to classify the unknown samples as malware or benign, with early prediction. The experimental results show that our solution can achieve high classification accuracy, fast detection, low power consumption, and flexibility for easy functionality upgrade to adapt to new malware samples. One of the main advantages of our design is the support of early prediction—detecting 46% of malware within first 30% of their execution, while 97% of the samples at 100% of their execution, with <3% false positives.
机译:最近,恶意软件已日益成为对嵌入式系统的严重威胁,而常规软件解决方案(如防病毒和补丁程序)在防御不断发展和先进的恶意程序方面却没有取得如此成功。在本文中,我们提出了一种硬件增强架构GuardOL,以执行在线恶意软件检测。 GuardOL是使用处理器和现场可编程门阵列(FPGA)的组合方法。我们的方法旨在捕获恶意软件的恶意行为(即高级语义)。为此,我们首先提出以频率为中心的模型,用于使用已知恶意软件和良性样本的系统调用模式进行特征构建。然后,我们在FPGA中开发一种机器学习方法(使用多层感知器)来训练使用这些功能的分类器。在运行时,训练有素的分类器可用于通过早期预测将未知样本分类为恶意软件或良性样本。实验结果表明,我们的解决方案可以实现较高的分类精度,快速检测,低功耗以及灵活的功能升级,以适应新的恶意软件样本。我们设计的主要优点之一是支持早期预测-在执行的前30%内检测到46%的恶意软件,而在执行的100%内检测到97%的样本,误报率小于3%。

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