Introducing Quantum Computing in Mobile Malware Detection

Giovanni Ciaramella, Giacomo Iadarola, F. Mercaldo, Marco Storto, A. Santone, Fabio Martinelli
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引用次数: 4

Abstract

Mobile malware are increasing their complexity to be able to evade the current detection mechanism by gathering our sensitive and private information. For this reason, an active research field is represented by malware detection, with a great effort in the development of deep learning models starting from a set of malicious and legitimate applications. The recent introduction of quantum computing made possible quantum machine learning i.e., the integration of quantum algorithms within machine learning algorithms. In this paper, we propose a comparison between several deep learning models, by taking into account also a hybrid quantum malware detector. We explore the effectiveness of different architectures for malicious family detection in the Android environment: LeNet, AlexNet, a Convolutional Neural Network model designed by authors, VGG16 and a Hybrid Quantum Convolutional Neural Network i.e., a model where the first layer is a quantum convolution that uses transformations in circuits to simulate the behavior of a quantum computer. Experiments performed on a real-world dataset composed of 8446 Android malicious and legitimate applications allow us to compare the various models, with particular regard to the quantum model concerning the other ones.
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量子计算在移动恶意软件检测中的应用
移动恶意软件正在增加其复杂性,以便能够通过收集我们的敏感和私人信息来逃避当前的检测机制。因此,恶意软件检测是一个活跃的研究领域,人们从一组恶意和合法的应用程序开始,努力开发深度学习模型。最近引入的量子计算使量子机器学习成为可能,即在机器学习算法中集成量子算法。在本文中,我们提出了几种深度学习模型之间的比较,同时考虑了混合量子恶意软件检测器。我们探索了Android环境中恶意家族检测的不同架构的有效性:LeNet, AlexNet,作者设计的卷积神经网络模型,VGG16和混合量子卷积神经网络,即第一层是量子卷积的模型,使用电路中的变换来模拟量子计算机的行为。在由8446个Android恶意和合法应用程序组成的真实数据集上进行的实验使我们能够比较各种模型,特别是关于其他模型的量子模型。
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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