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An adaptive framework against android privilege escalation threats using deep learning and semi-supervised approaches

机译:使用深度学习和半监督方法对抗Android特权升级威胁的自适应框架

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摘要

The immense popularity of Android makes it a primary target of malicious attackers and developers which brings a significant threat from malicious applications for android users through the escalation of the abuse of android permissions and inter-component communication (ICC) mechanism. Therefore, protecting android users from malicious developers and applications is crucial for Android market and communities. As malicious applications can hide their malicious behavior and change the behaviors frequently by abusing the android's ICC mechanism and related vulnerabilities, it is a challenging task to identify them accurately before it becomes a prevalent reason for users' privacy and data breach. Therefore, it is essential to develop such a malware detection engine that will ensure zeroday detection. In this research, we propose an adaptive framework which can learn the behavior of malware from the usage of permissions and their escalations. For our adaptive framework, we proposed two different detection models using deep learning and semi-supervised approaches. The proposed detection models can extract knowledge from unlabeled apps to identify the new malicious behavior using the unsupervised training nature of deep learning and clustering techniques and their integration to the supervised detection engine. Thus, our adaptive framework learns about new malicious apps and their behavior without supervised labeling by manual expert and can ensure zero-day protection. The proposed detection models have been tested on a real mobile malware test-bed and data set. The Experimental results show that the deep learning and semi-supervised based models achieve 99.024% of accuracies, more effective for zero-day protection and outperform other existing supervised detection engines. (C) 2020 Elsevier B.V. All rights reserved.
机译:Android的巨大普及使其成为恶意攻击者和开发人员的主要目标,它通过释放Android权限和组件间通信(ICC)机制来为Android用户提供重大威胁。因此,保护​​Android用户免受恶意开发人员和应用程序对于Android市场和社区至关重要。由于恶意应用程序可以通过滥用Android的ICC机制和相关的漏洞来掩盖他们的恶意行为并经常更改行为,这是一个具有挑战性的任务,在成为用户隐私和数据违规的普遍原因之前,这是一个具有挑战性的任务。因此,必须开发这种恶意软件检测引擎,该引擎将确保Zeroday检测。在这项研究中,我们提出了一种自适应框架,可以从使用权限和升级中学习恶意软件的行为。对于我们的自适应框架,我们提出了使用深度学习和半监督方法的两种不同的检测模型。所提出的检测模型可以从未标记的应用中提取知识,以确定使用深度学习和聚类技术的无监督培训性质及其与监督检测引擎的集成来识别新的恶意行为。因此,我们的自适应框架了解有关新恶意应用程序及其行为,而无需通过手动专家监督标签,并可以确保零日保护。所提出的检测模型已经在真正的移动恶意软件测试床和数据集上进行了测试。实验结果表明,深度学习和半监督的模型占高精度的99.024%,对零日保护更有效,更优于其他现有的监督检测引擎。 (c)2020 Elsevier B.V.保留所有权利。

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