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Effective classification of android malware families through dynamic features and neural networks

机译:通过动态特征和神经网络有效地分类Android恶意软件系列

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摘要

Due to their open nature and popularity, Android-based devices have attracted several end-users around the World and are one of the main targets for attackers. Because of the reasons given above, it is necessary to build tools that can reliably detect zero-day malware on these devices. At the moment, many of the frameworks that have been proposed to detect malware applications leverage Machine Learning (ML) techniques. However, an essential requirement to build these frameworks consists of using very large and sophisticated datasets for model construction and training purposes. Their success, indeed, strongly depends on the choice of the right features used for building a classification model providing adequate generalisation capability. Furthermore, the creation of a training dataset that well represents the malware properties and behaviour is one of the most critical challenges in malware analysis. Therefore, the main aim of this paper is proposing a new dataset called Unisa Malware Dataset (UMD) available on , which is based on the extraction of static and dynamic features characterising the malware activities. Additionally, we will show some experiments concerning common ML tools to demonstrate how it is possible to build efficient ML-based malware classification frameworks using the proposed dataset.
机译:由于他们开放的性质和人气,基于Android的设备吸引了世界各地的几个最终用户,是攻击者的主要目标之一。由于上面给出的原因,必须构建可以可靠地检测这些设备上的零日恶意软件的工具。目前,许多已提议检测恶意软件应用的框架利用机器学习(ML)技术。但是,构建这些框架的基本要求包括使用非常大而复杂的数据集进行模型构建和培训目的。实际上,他们的成功非常依赖于选择用于构建分类模型的正确特征,提供适当的泛化能力。此外,创建培训数据集的良好代表恶意软件属性和行为是恶意软件分析中最关键的挑战之一。因此,本文的主要目的是提出名为Unisa恶意软件数据集(UMD)的新数据集,这是基于表征恶意软件活动的静态和动态功能的提取。此外,我们将显示一些关于共同ML工具的实验,以演示如何使用所提出的数据集构建基于ML的恶意软件分类框架。

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