利用RasMMA算法生成Android恶意软件家族的恶意行为特征

Shun-Chieh Chang, Yeali S. Sun, Wu-Long Chuang, Meng Chang Chen, Bo Sun, Takeshi Takahashi
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引用次数: 1

摘要

恶意软件开发人员经常使用各种混淆技术来生成多态和变形版本的恶意程序。因此,恶意软件家族的变体通常表现出类似的行为,最重要的是,它们拥有某些共同的基本代码,以实现相同的设计目的。与此同时,对杀毒软件公司来说,跟上病毒的新变种并及时为每个人生成签名既昂贵又低效。它激发了我们不再与变体共舞的想法。在本文中,我们的目标是找到一个恶意软件家族的主要特征,操作或活动直接相关的意图。本文在分析恶意软件家族一系列变种apk的线程和进程的敏感和权限相关执行轨迹的基础上,提出了一种新的Android动态自动分析系统和恶意软件家族运行时行为签名生成方法——运行时API序列Motif Mining Algorithm (RasMMA)。我们展示了使用生成的家族签名使用真实数据集检测新变体的有效性。此外,目前的反恶意软件工具通常将检测模型视为分类的黑箱,并且很少解释恶意软件的行为以及它们如何一步步渗透目标系统并实现目标。我们以恶意软件家族DroidKungFu为例,说明生成的家族签名确实捕获了该家族的关键恶意活动。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANTSdroid: Using RasMMA Algorithm to Generate Malware Behavior Characteristics of Android Malware Family
Malware developers often use various obfuscation techniques to generate polymorphic and metamorphic versions of malicious programs. As a result, variants of a malware family generally exhibit resembling behavior, and most importantly, they possess certain common essential codes so to achieve the same designed purpose. Meantime, keeping up with new variants and generating signatures for each individual in a timely fashion has been costly and inefficient for anti-virus software companies. It motivates us the idea of no more dancing with variants. In this paper, we aim to find a malware family's main characteristic operations or activities directly related to its intent. We propose a novel automatic dynamic Android profiling system and malware family runtime behavior signature generation method called Runtime API sequence Motif Mining Algorithm (RasMMA) based on the analysis of the sensitive and permission-related execution traces of the threads and processes of a set of variant APKs of a malware family. We show the effectiveness of using the generated family signature to detect new variants using real-world dataset. Moreover, current anti-malware tools usually treat detection models as a black box for classification and offer little explanations on how malwares behave and how they proceed step by step to infiltrate targeted system and achieve the goal. We take malware family DroidKungFu as a case study to illustrate that the generated family signature indeed captures key malicious activities of the family.
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