cyider:为android恶意软件检测构建基于社区的网络防御基础设施

E. Karbab, M. Debbabi, A. Derhab, D. Mouheb
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引用次数: 30

摘要

Android操作系统的普及极大地增加了针对该移动操作系统的恶意软件。每天的恶意软件数量已经超过了检测过程。这一事实激发了开发恶意软件检测和家族归属解决方案的需求,这些解决方案需要最少的人工干预。作为回应,我们提出了Cypider框架,这是一套技术和工具,旨在通过构建有效且可扩展的恶意应用相似网络基础设施来系统地检测移动恶意软件。我们的检测方法是基于一个新的概念,即恶意社区,我们考虑,对于一个给定的家庭,具有共同特征的实例。在这个概念下,我们假设多个不同作者的类似Android应用程序最有可能是恶意的。Cypider利用这一假设来检测已知恶意软件家族和零日恶意软件的变体。值得一提的是,Cypider不依赖于基于签名或基于学习的模式。或者,它在相似网络上应用社区检测算法,提取被认为是可疑的和最可能是恶意社区的子图。在此基础上,提出了一种基于社区学习模型的社区指纹识别技术。Cypider在一次检测迭代中检测出约50%的恶意软件数据集,显示出出色的结果。此外,社区指纹的初步检测结果也很有希望,达到了87%的检测率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cypider: building community-based cyber-defense infrastructure for android malware detection
The popularity of Android OS has dramatically increased malware apps targeting this mobile OS. The daily amount of malware has overwhelmed the detection process. This fact has motivated the need for developing malware detection and family attribution solutions with the least manual intervention. In response, we propose Cypider framework, a set of techniques and tools aiming to perform a systematic detection of mobile malware by building an efficient and scalable similarity network infrastructure of malicious apps. Our detection method is based on a novel concept, namely malicious community, in which we consider, for a given family, the instances that share common features. Under this concept, we assume that multiple similar Android apps with different authors are most likely to be malicious. Cypider leverages this assumption for the detection of variants of known malware families and zero-day malware. It is important to mention that Cypider does not rely on signature-based or learning-based patterns. Alternatively, it applies community detection algorithms on the similarity network, which extracts sub-graphs considered as suspicious and most likely malicious communities. Furthermore, we propose a novel fingerprinting technique, namely community fingerprint, based on a learning model for each malicious community. Cypider shows excellent results by detecting about 50% of the malware dataset in one detection iteration. Besides, the preliminary results of the community fingerprint are promising as we achieved 87% of the detection.
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