Neural Network-Based Technique for Android Smartphone Applications Classification

Roman Graf, Leon Aaron Kaplan, Ross King
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引用次数: 4

Abstract

With the booming development of smartphone capabilities, these devices are increasingly frequent victims of targeted attacks in the ‘silent battle’ of cyberspace. Protecting Android smartphones against the increasing number of malware applications has become as crucial as it is complex. To be effective in identifying and defeating malware applications, cyber analysts require novel distributed detection and reaction methodologies based on information security techniques that can automatically analyse new applications and share analysis results between smartphone users. Our goal is to provide a real-time solution that can extract application features and find related correlations within an aggregated knowledge base in a fast and scalable way, and to automate the classification of Android smartphone applications. Our effective and fast application analysis method is based on artificial intelligence and can support smartphone users in malware detection and allow them to quickly adopt suitable countermeasures following malware detection. In this paper, we evaluate a deep neural network supported by word-embedding technology as a system for malware application classification and assess its accuracy and performance. This approach should reduce the number of infected smartphones and increase smartphone security. We demonstrate how the presented techniques can be applied to support smartphone application classification tasks performed by smartphone users.
基于神经网络的Android智能手机应用分类技术
随着智能手机功能的蓬勃发展,这些设备越来越频繁地成为网络空间“无声战争”中有针对性攻击的受害者。保护Android智能手机免受越来越多的恶意软件的侵害,已经变得既重要又复杂。为了有效地识别和击败恶意软件应用程序,网络分析师需要基于信息安全技术的新型分布式检测和反应方法,这些方法可以自动分析新的应用程序并在智能手机用户之间共享分析结果。我们的目标是提供一个实时的解决方案,能够以快速和可扩展的方式提取应用程序的特征,并在聚合的知识库中找到相关的相关性,并实现Android智能手机应用程序的自动化分类。我们基于人工智能的高效快速应用分析方法,可以支持智能手机用户进行恶意软件检测,并允许他们在恶意软件检测后快速采取合适的对策。本文对基于词嵌入技术的深度神经网络恶意软件分类系统进行了评价,并对其准确性和性能进行了评估。这种方法可以减少受感染智能手机的数量,提高智能手机的安全性。我们演示了如何应用所提出的技术来支持智能手机用户执行的智能手机应用程序分类任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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