针对社交媒体应用的移动恶意软件分类

M. Saudi, Azuan Ahmad, Sharifah Roziah Mohd Kassim, M. A. Husainiamer, Anas Zulkifli Kassim, N. J. Zaizi
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引用次数: 2

摘要

组织和用户在智能手机检测移动恶意软件攻击方面面临许多挑战。不同的解决方案提供商开发了许多技术,以确保智能手机免受此类攻击。尽管如此,我们仍然缺乏有效的技术来检测移动恶意软件攻击,特别是针对社交媒体应用程序。因此,本文提出了基于API和权限的移动恶意软件分类,可用于针对社交媒体应用程序的移动恶意软件检测。基于恶意软件行为、漏洞利用和手机的相关性,已经为此目的开发了一种移动恶意软件分类,并且已经寻求一种移动应用程序(app)来支持这种新的分类。这项研究是在一个受控的实验室环境中进行的,使用了开源工具并应用了混合分析。根据所进行的测试,结果显示,这些移动应用程序被归类为危险应用程序,其中16%用于通话记录利用,13%用于音频利用,9%用于GPS利用。这些结果表明,攻击者可能会发动不同的网络攻击。今后,本文可以为其他有相同兴趣的研究者提供参考。
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Mobile Malware Classification for Social Media Application
Organisations and users face many challenges against smartphone in detecting mobile malware attacks. Many techniques have been developed by different solution providers to ensure that smartphones remain free from such attacks. Nonetheless, we still lack efficient techniques to detect mobile malware attacks, especially for the social media application. Hence, this paper presents mobile malware classifications based on API and permission that can be used for mobile malware detection with regard to the social media applications. A mobile malware classification based on correlation of malware behaviour, vulnerability exploitation and mobile phone has been developed for this purpose and a mobile application (app) has been sought to support this new classification. This research was conducted in a controlled lab environment using open source tools and by applying hybrid analysis. Based on the testing conducted, the results showed that the mobile apps were categorized as dangerous with 16% for call log exploitation, 13% for audio exploitation and 9% for GPS exploitation. These results indicated that the attackers could launch possible different cyber attacks. In future, this paper can be used as reference for other researchers with the same interest.
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Instrumenting API Hooking for a Realtime Dynamic Analysis Mobile Malware Classification for Social Media Application TAGraph: Knowledge Graph of Threat Actor Feature Extraction and Selection Method of Cyber-Attack and Threat Profiling in Cybersecurity Audit ICoCSec 2019 Author Index
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