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A hybrid approach of mobile malware detection in Android

机译:Android中移动恶意软件检测的混合方法

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摘要

Android security incidents occurred frequently in recent years. This motivates us to study mobile app security, especially in Android open mobile operating system. In this paper, we propose a novel hybrid approach for mobile malware detection by adopting both dynamic analysis and static analysis. We collect execution data of sample malware and benign apps using a net_link technology to generate patterns of system calls related to file and network access. Furthermore, we build up a malicious pattern set and a normal pattern set by comparing the patterns of malware and benign apps with each other. For detecting an unknown app, we use a dynamic method to collect its system calling data. We then compare them with both the malicious and normal pattern sets offline in order to judge the unknown app. Based on the test on a set of mobile malware and benign apps, we found that our approach achieves better detection success rate than some methods using either static analysis or dynamic analysis. What is more, the proposed approach is generic, which can detect different types of malware effectively. Its detection accuracy can be further improved since the pattern sets can be automatically optimized through self-learning.
机译:近年来,Android安全事件频繁发生。这促使我们研究移动应用程序的安全性,尤其是在Android开放式移动操作系统中。在本文中,我们通过同时采用动态分析和静态分析,提出了一种用于移动恶意软件检测的新型混合方法。我们使用net_link技术收集示例恶意软件和良性应用程序的执行数据,以生成与文件和网络访问相关的系统调用模式。此外,我们通过比较恶意软件和良性应用程序的模式来建立恶意模式集和正常模式集。为了检测未知应用程序,我们使用动态方法来收集其系统调用数据。然后,我们将它们与离线的恶意和正常模式集进行比较,以判断未知的应用程序。基于对一组移动恶意软件和良性应用程序的测试,我们发现,与使用静态分析或动态分析的某些方法相比,我们的方法可实现更高的检测成功率。而且,所提出的方法是通用的,可以有效地检测不同类型的恶意软件。由于可以通过自学习自动优化模式集,因此可以进一步提高其检测精度。

著录项

  • 来源
    《Journal of Parallel and Distributed Computing 》 |2017年第5期| 22-31| 共10页
  • 作者

    Fei Tong; Zheng Yan;

  • 作者单位

    State Key Laboratory on Integrated Services Networks, School of Cyber Engineering. Xidian University, China;

    State Key Laboratory on Integrated Services Networks, School of Cyber Engineering. Xidian University, China,Department of Communications and Networking. Aalto University, Espoo, Finland;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Android; Malware detection; Pattern match; System call;

    机译:Android;恶意软件检测;模式匹配;系统调用;

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