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Identifying metamorphic virus using n-grams and Hidden Markov Model

机译:使用n-gram和隐马尔可夫模型识别变态病毒

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Computer virus is a rapidly evolving threat to the computing community. These viruses fall into different categories and it is generally believed that metamorphic viruses are extremely difficult to detect. The first step to effectively combat a virus is to successfully classify it's family so that past experience can be readily applied to understand it's functionality and apply the right strategy to mitigate it. In this paper we propose and test a Hidden Markov Model (HMM) based classifier that can be used to identify the family to which a virus understudy belongs to. The proposed solution is to train multiple HMM's, each representing a family of virus and then determine the family of the virus to be identified based on the log-likelihood similarity score obtained. Malware samples from the malicia data set were used to evaluate the proposed technique.
机译:计算机病毒是对计算社区的迅速发展的威胁。这些病毒分为不同类别,通常认为变态病毒极难检测。有效对抗病毒的第一步是成功地对病毒进行分类,以便可以根据过去的经验轻松地了解病毒的功能并采用正确的策略来减轻病毒的危害。在本文中,我们提出并测试了基于隐马尔可夫模型(HMM)的分类器,该分类器可用于识别病毒研究对象所属的家族。提出的解决方案是训练多个HMM,每个HMM代表一个病毒家族,然后根据所获得的对数似然相似度评分确定要识别的病毒家族。来自Malicia数据集的恶意软件样本用于评估提出的技术。

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