保护移动应用程序免受移动恶意软件攻击:一个案例研究

M. A. Husainiamer, Madihah Mohd Saudi, Muhammad Yusof
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引用次数: 1

摘要

如今,针对在线系统和移动应用程序(app)的安全漏洞正在急剧增加。由于新规范,大多数会议都是在线进行的,因此存在许多安全挑战。因此,本文提出了一个名为Mobotder的新模型,用于检测基于地理定位(GPS)、权限、应用程序编程接口(API)调用和系统调用的在线会议应用程序和在线游戏可能存在的安全漏洞。该模型是在受控的实验室环境中使用来自Drebin和谷歌Play Store的数据集进行训练和评估的混合分析构建的。作为所开发模型的概念验证(POC),进行了一个由20个在线会议应用程序组成的案例研究。结果,10%的测试移动应用程序有被攻击者利用的高风险。而对于网络游戏,10个匿名评估的网络游戏中有7个被确定为中等风险。对于未来的工作,该模型可以作为开发针对在线移动应用的移动恶意软件检测系统的基准和指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Securing Mobile Applications Against Mobile Malware Attacks: A Case Study
Nowadays, the security exploitations against online systems and mobile applications(apps) are increasing tremendously. Due to the new norm, most of the meetings were conducted online with so many security challenges. Hence, this paper presents a new model called Mobotder to detect possible security exploitation for online meeting applications and online games based on geolocation (GPS), permissions, Application Programming Interface (API) calls, and system calls. This model was built using hybrid analysis in a controlled lab environment with the dataset from Drebin and Google Play Store for training and evaluation. As proof of concept (POC) for the developed model, a case study consists of twenty (20) online meeting applications were conducted. As a result, 10% of the tested mobile apps were at high risk of potentially being exploited by the attackers. While for online games, 7 out of 10 anonymous evaluated online games were identified as medium risk. As for future work, this model can be used as the benchmark and guideline in developing a mobile malware detection system for online mobile apps.
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