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The Effects of Different Representations on Static Structure Analysis of Computer Malware Signatures

机译:不同表示形式对计算机恶意软件签名静态结构分析的影响

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摘要

The continuous growth of malware presents a problem for internet computing due to increasingly sophisticated techniques for disguising malicious code through mutation and the time required to identify signatures for use by antiviral software systems (AVS). Malware modelling has focused primarily on semantics due to the intended actions and behaviours of viral and worm code. The aim of this paper is to evaluate a static structure approach to malware modelling using the growing malware signature databases now available. We show that, if malware signatures are represented as artificial protein sequences, it is possible to apply standard sequence alignment techniques in bioinformatics to improve accuracy of distinguishing between worm and virus signatures. Moreover, aligned signature sequences can be mined through traditional data mining techniques to extract metasignatures that help to distinguish between viral and worm signatures. All bioinformatics and data mining analysis were performed on publicly available tools and Weka.
机译:恶意软件的持续增长为互联网计算带来了一个问题,这是由于越来越复杂的技术通过突变掩盖恶意代码以及确定签名以供抗病毒软件系统(AVS)使用所需的时间。由于病毒和蠕虫代码的预期动作和行为,恶意软件建模主要集中在语义上。本文的目的是使用日益增长的恶意软件签名数据库来评估静态结构方法进行恶意软件建模。我们表明,如果恶意软件签名被表示为人工蛋白质序列,则可以在生物信息学中应用标准序列比对技术来提高区分蠕虫和病毒签名的准确性。此外,可以通过传统的数据挖掘技术来挖掘比对的签名序列,以提取有助于区分病毒签名和蠕虫签名的元签名。所有生物信息学和数据挖掘分析均使用公开工具和Weka进行。

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