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Measuring similarity of malware behavior

机译:测量恶意软件行为的相似性

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Malicious software (malware) represents a major threat for computer systems of almost all types. In the past few years the number of prevalent malware samples has increased dramatically due to the fact that malware authors started to deploy morphing (aka obfuscation) techniques in order to hinder detection of such polymorphic malware by anti-malware products. Using these techniques numerous variants of a malware can be generated. All these variants have a different syntactic representation while providing almost the same functionality and showing similar behavior. In order to effectively detect polymorphic malware it is advantageous (if not required) to know which malware samples are variants of a particular malware. Respective approaches for determining this relation between malware samples automatically are currently investigated by a number of researchers. A prerequisite for assessing this relation based on particular features of malware samples is an appropriate similarity or distance measure. In particular a number of approaches for clustering malware samples have been recently published. Thereby different similarity measures are used but without thoroughly discussing their choice. So it is an unanswered question which similarity measures are appropriate for determining respective relations between malware samples. To answer this question we study different distance measures in detail and discuss desirable properties of a distance measure for this particular purpose. We focus on behavioral features of malware and compare and experimentally evaluate different distance measures for malware behavior. Based on our results we identify a most appropriate distance measure for grouping malware samples based on similar behavior.
机译:恶意软件(恶意软件)对几乎所有类型的计算机系统都构成了主要威胁。在过去的几年中,由于恶意软件作者开始部署变体(也称为混淆)技术以阻止反恶意软件产品检测到这种多态恶意软件,因此流行的恶意软件样本数量急剧增加。使用这些技术,可以生成恶意软件的多种变体。所有这些变体在提供几乎相同的功能并显示相似的行为的同时,具有不同的语法表示形式。为了有效地检测多态恶意软件,了解哪些恶意软件样本是特定恶意软件的变体是有利的(如果不需要)。当前,许多研究人员正在研究用于自动确定恶意软件样本之间的这种关系的各种方法。根据恶意软件样本的特定特征评估这种关系的前提是适当的相似性或距离度量。特别是,最近已经发布了许多将恶意软件样本聚类的方法。因此,使用了不同的相似性度量,但是没有彻底讨论它们的选择。因此,哪个相似性度量适合确定恶意软件样本之间的各个关系是一个悬而未决的问题。为了回答这个问题,我们详细研究了不同的距离量度,并讨论了为此目的而设计的距离量度的理想特性。我们专注于恶意软件的行为特征,并比较和实验评估恶意软件行为的不同距离度量。根据我们的结果,我们确定了一种基于相似行为对恶意软件样本进行分组的最合适的距离度量。

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