TL-GNN: Android Malware Detection Using Transfer Learning

Applied AI letters Pub Date : 2024-05-10 DOI:10.1002/ail2.94
Ali Raza, Zahid Hussain Qaisar, Naeem Aslam, Muhammad Faheem, Muhammad Waqar Ashraf, Muhammad Naman Chaudhry
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Abstract

Malware growth has accelerated due to the widespread use of Android applications. Android smartphone attacks have increased due to the widespread use of these devices. While deep learning models offer high efficiency and accuracy, training them on large and complex datasets is computationally expensive. Hence, a method that effectively detects new malware variants at a low computational cost is required. A transfer learning method to detect Android malware is proposed in this research. Because of transferring known features from a source model that has been trained to a target model, the transfer learning approach reduces the need for new training data and minimizes the need for huge amounts of computational power. We performed many experiments on 1.2 million Android application samples for performance evaluation. In addition, we evaluated how well our framework performed in comparison with traditional deep learning and standard machine learning models. In comparison with state-of-the-art Android malware detection methods, the proposed framework offers improved classification accuracy of 98.87%, a precision of 99.55%, recall of 97.30%, F1-measure of 99.42%, and a quicker detection rate of 5.14 ms using the transfer learning strategy.

Abstract Image

TL-GNN:利用迁移学习检测安卓恶意软件
由于 Android 应用程序的广泛使用,恶意软件增长速度加快。由于安卓智能手机的广泛使用,这些设备受到的攻击也在增加。虽然深度学习模型具有很高的效率和准确性,但在大型复杂数据集上训练这些模型的计算成本很高。因此,需要一种能以低计算成本有效检测新恶意软件变种的方法。本研究提出了一种检测安卓恶意软件的迁移学习方法。由于将已知特征从已训练的源模型转移到目标模型,转移学习方法减少了对新训练数据的需求,并最大限度地降低了对大量计算能力的需求。我们在 120 万个安卓应用样本上进行了多次实验,以评估性能。此外,我们还评估了我们的框架与传统深度学习和标准机器学习模型的性能对比。与最先进的安卓恶意软件检测方法相比,拟议框架的分类准确率提高了 98.87%,精确度提高了 99.55%,召回率提高了 97.30%,F1-measure 提高了 99.42%,使用迁移学习策略的快速检测率提高了 5.14 毫秒。
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