NADM:用于Android检测恶意软件的神经网络

Nguyen Viet Duc, P. T. Giang
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引用次数: 9

摘要

近年来,安卓一直占据着全球智能手机销量的80%左右。Android操作系统由于其大众化和开放性的特点,正成为手机恶意软件攻击最多的系统平台。它们会对Android设备造成很多损害,比如数据丢失或硬件破坏。根据预测特征,机器学习是处理快速增长的新恶意软件数量的好方法。本文提出了基于神经网络的Android恶意软件检测(NADM)方法。NADM执行一个分析过程来收集Android应用程序的特性。然后将这些数据转换成联合向量空间,作为深度学习过程中训练部分的输入。我们的分类器模型可以实现一个高精度的系统,并在Google Play上的sProtect[15]中得到了应用。
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NADM: Neural Network for Android Detection Malware
Over recent years, Android is always captured roughly 80% of the worldwide smartphone volume. Due to its popularity and open characteristic, the Android OS is becoming the system platform most targeted from mobile malware. They can cause a lot of damage on Android devices such as data loss or sabotage of hardware. According to the predictive characteristics, machine learning is a good approach to deal with the number of new malwares increasing rapidly. In this paper, we propose Neural Network for Android Detection of Malware (NADM). The NADM performs an analysis process to gather features of Android applications. Then, these data will be converted into joint vector spaces, which to be input for the training part of deep learning process. Our classifier model can achieve a high accuracy system and has been applied in sProtect [15] on Google Play.
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