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A Deep Malware Detection Method Based on General-Purpose Register Features

机译:一种基于通用寄存器功能的深恶色软件检测方法

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Based on low-level features at micro-architecture level, the existing detection methods usually need a long sample length to detect malicious behaviours and can hardly identify non-signature malware, which will inevitably affect the detection efficiency and effectiveness. To solve the above problems, we propose to use the General-Purpose Registers (GPRs) as our features and design a novel deep learning model for malware detection. Specifically, each register has specific functions and changes of its content contain the action information which can be used to detect illegal behaviours. Also, we design a deep detection model, which can jointly fuse spatial and temporal correlations of GPRs for malware detection only requiring a short sample length. The proposed deep detection model can well learn discriminative characteristics from GPRs between normal and abnormal processes, and thus can also identify non-signature malware. Comprehensive experimental results show that our proposed method performs better than the state-of-art methods for malicious behaviours detection relying on low-level features.
机译:基于微架构级别的低级功能,现有的检测方法通常需要长时间的样本长度来检测恶意行为,并且几乎无法识别非签名恶意软件,这将不可避免地影响检测效率和有效性。为了解决上述问题,我们建议使用通用寄存器(GPRS)作为我们的特征和设计恶意软件检测的新型深度学习模型。具体地,每个寄存器具有特定功能,其内容的变化包含可用于检测非法行为的动作信息。此外,我们设计了一个深度检测模型,它可以共同熔断GPRS的空间和时间相关性,用于恶意软件检测,仅需要短样本长度。所提出的深度检测模型可以很好地学习来自正常和异常过程之间的GPRS的判别特征,因此也可以识别非签名恶意软件。综合实验结果表明,我们所提出的方法比依赖于低级功能的恶意行为检测更好地表现更好。

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