Android应用程序中检测恶意软件的深度学习模型综述

Elliot Mbunge , Benhildah Muchemwa , John Batani , Nobuhle Mbuyisa
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引用次数: 2

摘要

安卓应用程序是不可或缺的资源,有助于沟通、健康监测、规划、数据共享和同步、社交、商业和金融交易。然而,智能手机渗透率的快速增长导致了网络攻击的增加。智能手机应用程序使用权限允许用户使用不同的功能,使他们容易受到恶意软件(恶意软件)的攻击。尽管安卓应用程序的使用和网络攻击有所增加,但使用深度学习(DL)模型来检测安卓应用中新出现的恶意软件仍处于萌芽状态。因此,这篇综述试图解释用于检测安卓应用程序中恶意软件的DL模型,探索其性能,并确定新出现的研究空白,并为未来的工作提出建议。本研究采用了系统审查的首选报告项目和荟萃分析(PRISMA)指南来指导审查。研究表明,卷积神经网络、门控递归神经网络、深度神经网络、双向长短期记忆、长短期记忆(LSTM)和立方体LSTM是安卓应用中最突出的基于深度学习的恶意软件检测模型。研究结果表明,深度学习模型正日益成为安卓应用程序中实时检测恶意软件的有效技术。然而,由于恶意软件和人类行为的演变性质,监控和跟踪信息流和恶意软件行为是一项艰巨的任务。因此,在开发检测模型时,培训移动应用程序用户并共享更新的恶意软件数据集至关重要。在下载移动应用程序之前,还需要检测恶意软件,以提高安卓智能手机的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A review of deep learning models to detect malware in Android applications

Android applications are indispensable resources that facilitate communication, health monitoring, planning, data sharing and synchronization, social interaction, business and financial transactions. However, the rapid increase in the smartphone penetration rate has consequently led to an increase in cyberattacks. Smartphone applications use permissions to allow users to utilize different functionalities, making them susceptible to malicious software (malware). Despite the rise in Android applications’ usage and cyberattacks, the use of deep learning (DL) models to detect emerging malware in Android applications is still nascent. Therefore, this review sought to explain DL models that are applied to detect malware in Android applications, explore their performance as well as identify emerging research gaps and present recommendations for future work. This study adopted the preferred reporting items for systematic reviews and meta-analyses (PRISMA) guidelines to guide the review. The study revealed that convolutional neural networks, gated recurrent neural networks, deep neural networks, bidirectional long short-term memory, long short-term memory (LSTM) and cubic-LSTM are the most prominent deep learning-based malicious software detection models in Android applications. The findings show that deep learning models are increasingly becoming an effective technique for malicious software detection in Android applications in real-time. However, monitoring and tracking information flow and malware behavior is a daunting task because of the evolving nature of malware and human behavior. Therefore, training mobile application users and sharing updated malware datasets is paramount in developing detection models. There is also a need to detect malicious software before downloading mobile applications to improve the security of Android smartphones.

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