基于多变量时间序列技术的Android恶意软件检测

Ki-Hyeon Kim, Mi-Jung Choi
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引用次数: 9

摘要

最近,智能设备的使用随着其性能的提高而继续普及。随着智能设备的普及,信使、社交网络、智能银行等各种服务应运而生,为用户带来了便利。然而,另一方面也面临着安全漏洞的威胁。这种威胁造成的损害包括个人信息泄露、不合理收费、获取root权限等。此外,据说Android被认为是智能设备操作系统中最脆弱的操作系统,恶意软件代码的危害最大。据此,本文提出了一种基于Android设备的多变量时间序列分析恶意代码检测技术。将多种资源信息整合为一个资源来组织数据,采用时间序列模型的自回归移动平均模型进行建模。将建模数据与实际数据进行匹配,检测出恶意代码。实验结果表明了该方法的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Android malware detection using multivariate time-series technique
Recently, use of smart devices has continued to spread in parallel with their performance improvement. The proliferation of smart devices has led to an emergence of various services such as messengers, SNS and smart banking, and brought convenience in using the services. However, the threat called security vulnerabilities is being faced on the other side. The damages suffered from such a threat are personal information leakage, unreasonable charging, root permission acquisition and so on. In addition, it is said that Android, which is considered as the most vulnerable operating system among the smart devices' operating systems, has the greatest damage of malware codes. Accordingly, this paper proposes a technique to detect malicious codes based on Android devices by using the multivariate time-series analysis. A variety of resource information is integrated into a resource to organize data, and an autoregressive moving average model of the time-series models is used to carry out the modeling. The modeled data is matched with real data to detect malicious codes. The proposed method's validity and excellence is suggested through this experimental result.
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