Sancheng Peng, Lihong Cao, Yongmei Zhou, Jianguo Xie, Pengfei Yin, Jianli Mo
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引用次数: 1

摘要

Android是最受欢迎的开源移动平台,吸引了许多开发人员,他们开发了许多广泛的应用程序(app)。由于其开放性,它还吸引了向毫无戒心的用户发送大量恶意软件的攻击者。这不仅威胁到国家安全,也影响到我们的日常生活。深度学习已经成为最受欢迎的技术之一,并得到了学术界和工业界研究人员的赞赏,因此它将不可避免地成为在广泛的应用领域进行复杂分析的重要工具。它吸引了越来越多的研究,从热门话题提取到Android恶意软件。在本文中,我们对Android恶意软件检测进行了全面的研究,并讨论了基于深度学习的恶意软件特征及其分析方法。提出了基于深度学习的Android智能手机安全生态。此外,讨论了将深度学习应用于智能手机安全中与现实问题相关的研究挑战,重点研究了最优参数的获取、对抗性样本的处理、大规模样本数据集的收集、攻击防御、可解释性和可追溯性的拥有等研究问题。我们的目标是通过智能手机恶意软件的深度学习,为现有和正在进行的研究提供一个广泛的研究指南,帮助研究人员更好地理解现有的工作,并设计出越来越有效的机制来检测智能手机恶意软件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Challenges and Trends of Android Malware Detection in the Era of Deep Learning
Android, the most popular open source mobile platform, attracts a lot of developers who have produced numerous widespread applications (apps). It also draws attackers who have delivered a large amount of malwares to unsuspecting users, due to its open nature. This is not only a threat to national security, but also affect our daily lives. Deep learning has become one of the most popular technologies, and has gained an appreciation to academic and industrial researchers, so it will inevitably become an essential tool to perform complex analysis in a broad application fields. It is appealing to an increasing amount of research ranging from popular topics extraction to Android malware. In this paper, we provide a comprehensive investigation of Android malware detection, and discuss the characteristics of malware and its analysis methods based on deep learning. The secure ecology of Android smartphone based on deep learning is also presented. In addition, research challenges relevant to realworld issues by applying deep learning in smartphone security are discussed, focusing on research issues such as the obtain of optimal parameters, processing of adversarial sample, collection of large scale sample dataset, defence against attack, possession of interpretability and traceability. Our goal is to provide a widespread research guideline to the existing and ongoing efforts via deep learning for smartphone malware, to help researchers better understand the existing work, and to design more and more effective mechanisms to detect smartphone malware.
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