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Polymorphic Malware Detection Using Hierarchical Hidden Markov Model

机译:分层隐马尔可夫模型的多态恶意软件检测

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摘要

Binary signatures have been widely used to detect malicious software on the current Internet. However, this approach is unable to achieve the accurate identification of polymorphic malware variants, which can be easily generated by the malware authors using code generation engines. Code generation engines randomly produce varying code sequences but perform the same desired malicious functions. Previous research used flow graph and signature tree to identify polymorphic malware families. The key difficulty of previous research is the generation of precisely defined state machine models from polymorphic variants. This paper proposes a novel approach, using Hierarchical Hidden Markov Model (HHMM), to provide accurate inductive inference of the malware family. This model can capture the features of self-similar and hierarchical structure of polymorphic malware family signature sequences. To demonstrate the effectiveness and efficiency of this approach, we evaluate it with real malware samples. Using more than 15,000 real malware, we find our approach can achieve high true positives, low false positives, and low computational cost.
机译:二进制签名已被广泛用于检测当前Internet上的恶意软件。但是,这种方法无法实现多态恶意软件变体的准确识别,而恶意软件作者可以使用代码生成引擎轻松地生成多态恶意软件变体。代码生成引擎随机产生变化的代码序列,但执行相同的所需恶意功能。先前的研究使用流程图和签名树来识别多态恶意软件家族。先前研究的关键困难是从多态变体生成精确定义的状态机模型。本文提出了一种使用分层隐马尔可夫模型(HHMM)的新颖方法,以提供对恶意软件家族的准确归纳推断。该模型可以捕获多态恶意软件家族签名序列的自相似和分层结构的特征。为了证明这种方法的有效性和效率,我们使用真实的恶意软件样本对其进行了评估。使用超过15,000种实际恶意软件,我们发现我们的方法可以实现较高的真实肯定率,较低的错误肯定率和较低的计算成本。

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