Profiling mobile malware behaviour through hybrid malware analysis approach

M. Z. Mas'ud, S. Shahrin, M. F. Abdollah, S. R. Selamat, R. Yusof, R. Ahmad
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引用次数: 10

Abstract

Nowadays, the usage of mobile device among the community worldwide has been tremendously increased. With this proliferation of mobile devices, more users are able to access the internet for variety of online application and services. As the use of mobile devices and applications grows, the rate of vulnerabilities exploitation and sophistication of attack towards the mobile user are increasing as well. To date, Google's Android Operating System (OS) are among the widely used OS for the mobile devices, the openness design and ease of use have made them popular among developer and user. Despite the advantages the android-based mobile devices have, it also invited the malware author to exploit the mobile application on the market. Prior to this matter, this research focused on investigating the behaviour of mobile malware through hybrid approach. The hybrid approach correlates and reconstructs the result from the static and dynamic malware analysis in producing a trace of malicious event. Based on the finding, this research proposed a general mobile malware behaviour model that can contribute in identifying the key features in detecting mobile malware on an Android Platform device.
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利用混合恶意软件分析方法分析移动恶意软件行为
如今,移动设备在全球范围内的使用已经大大增加。随着移动设备的普及,越来越多的用户能够访问互联网,使用各种在线应用程序和服务。随着移动设备和应用程序使用的增长,针对移动用户的漏洞利用率和攻击的复杂性也在增加。迄今为止,b谷歌的Android操作系统(OS)是应用最广泛的移动设备操作系统之一,其开放性设计和易用性使其深受开发者和用户的欢迎。尽管基于android的移动设备具有优势,但它也邀请恶意软件作者利用市场上的移动应用程序。在此之前,本研究主要通过混合方法调查移动恶意软件的行为。该方法将静态和动态恶意软件分析的结果进行关联和重构,从而产生恶意事件的踪迹。基于这一发现,本研究提出了一种通用的移动恶意软件行为模型,该模型有助于识别Android平台设备上检测移动恶意软件的关键特征。
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