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Using hidden markov model for dynamic malware analysis: First impressions

机译:使用隐藏的Markov模型进行动态恶意软件分析:第一印象

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Malware developers are coming up with new techniques to escape malware detection. Furthermore, with the common availability of malware construction kits and metamorphic virus generators, creation of obfuscated malware has become a child's play. This has made the task of anti-malware industry a challenging one, who need to analyze tens of thousands of new malware samples everyday in order to provide defense against the malware threat. The silver lining is that most of the malware generated by such means is different only syntactically, and hence techniques employing dynamic analysis and behavior modeling can be effectively used for classifying malware. In this paper we have proposed a malware classification scheme based on Hidden Markov Models using system calls as observed symbols. Our approach combines the powerful statistical pattern analysis capability of Hidden Markov Models with the proven capacity of system calls as discriminating dynamic features for countering malware obfuscation. Testing the proposed technique on system call logs of real malware shows that it has the potential of effectively classifying unknown malware into known classes.
机译:恶意软件开发人员正在想出新技术来逃避恶意软件检测。此外,随着恶意软件构建工具包和变态病毒生成器的普遍可用性,混淆的恶意软件的创建已成为孩子们的游戏。这使反恶意软件行业的任务变得充满挑战,他们每天需要分析成千上万的新恶意软件样本,以提供针对恶意软件威胁的防御能力。一线希望是,通过这种方式生成的大多数恶意软件仅在语法上有所不同,因此采用动态分析和行为建模的技术可以有效地用于对恶意软件进行分类。在本文中,我们提出了一种基于隐马尔可夫模型的恶意软件分类方案,该方法使用系统调用作为观察符号。我们的方法将隐马尔可夫模型的强大统计模式分析功能与经过验证的系统调用功能相结合,可以区分动态特征以对抗恶意软件混淆。在真实恶意软件的系统调用日志上测试该提议的技术表明,它具有将未知恶意软件有效地分类为已知类别的潜力。

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