An Energy Efficient, Robust, Sustainable, and Low Computational Cost Method for Mobile Malware Detection

Rohan Chopra, Saket Acharya, U. Rawat, Roheet Bhatnagar
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引用次数: 3

Abstract

Android malware has been rising alongside the popularity of the Android operating system. Attackers are developing malicious malware that undermines the ability of malware detecting systems and circumvents such systems by obfuscating their disposition. Several machine learning and deep learning techniques have been proposed to retaliate to such problems; nevertheless, they demand high computational power and are not energy efficient. Hence, this article presents an approach to distinguish between benign and malicious malware, which is robust, cost-efficient, and energy-saving by characterizing CNN-based architectures such as the traditional CNN, AlexNet, ResNet, and LeNet-5 and using transfer learning to determine the most efficient framework. The OAT (of-ahead time) files created during the installation of an application on Android are examined and transformed into images to train the datasets. The Hilbert space-filling curve is then used to transfer instructions into pixel locations of the 2-D image. To determine the most ideal model, we have performed several experiments on Android applications containing several benign and malicious samples. We used distinct datasets to test the performance of the models against distinct study questions. We have compared the performance of the aforementioned CNN-based architectures and found that the transfer learning model was the most efficacious and computationally inexpensive one. The proposed framework when used with a transfer learning approach provides better results in comparison to other state-of-the-art techniques.
一种高效、稳健、可持续、低计算成本的移动恶意软件检测方法
随着Android操作系统的普及,Android恶意软件也在不断增加。攻击者正在开发恶意软件,破坏恶意软件检测系统的能力,并通过混淆它们的处置来绕过这些系统。已经提出了几种机器学习和深度学习技术来解决这些问题;然而,它们需要很高的计算能力,而且不节能。因此,本文提出了一种区分良性和恶意恶意软件的方法,该方法具有鲁棒性,成本效益和节能性,通过表征基于CNN的架构,如传统的CNN, AlexNet, ResNet和LeNet-5,并使用迁移学习来确定最有效的框架。在Android上安装应用程序期间创建的OAT(提前时间)文件被检查并转换为图像以训练数据集。然后使用希尔伯特空间填充曲线将指令传输到二维图像的像素位置。为了确定最理想的模型,我们在包含几个良性和恶意样本的Android应用程序上进行了几次实验。我们使用不同的数据集来针对不同的研究问题测试模型的性能。我们比较了上述基于cnn的体系结构的性能,发现迁移学习模型是最有效且计算成本最低的模型。与其他最先进的技术相比,所提出的框架与迁移学习方法一起使用可以提供更好的结果。
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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