An Adaptive Dataset for the Evaluation of Android Malware Detection Techniques

Omar Hreirati, Shahrear Iqbal, Mohammad Zulkernine
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引用次数: 1

Abstract

Android is currently the leading mobile operating system in the world. The huge number of Android devices attracts developers to create applications for it. However, it also attracts attackers that collect sensitive data or make money. This problem has led many researchers to propose malware detection systems and custom versions of Android that can help users against malicious activities. Evaluating these systems is a crucial part of malware prevention research. However, recent datasets that cover different kinds of benign and malicious applications to evaluate the malware detection techniques are often not available. With thousands of newly released applications every day and different new malicious activities discovered, it is difficult to keep malicious application datasets up to date. This paper introduces a recent and adaptive dataset that includes 5,000 applications from different malware categories that can be used by the research community. The applications are selected from more than 5 million applications. To show how the dataset can be used, we deploy a popular malware analysis platform and generate detailed reports on all the applications in an automated way. We also provide the steps to update the dataset and perform the analysis automatically on the updated set of samples. We believe that the adaptiveness of the dataset and the automatic analysis process will help researchers save time in preparing their datasets and focus more on the detection techniques.
一种评估Android恶意软件检测技术的自适应数据集
Android是目前世界上领先的移动操作系统。Android设备的庞大数量吸引着开发者为其开发应用程序。然而,它也吸引了收集敏感数据或赚钱的攻击者。这个问题导致许多研究人员提出恶意软件检测系统和定制版本的Android,可以帮助用户抵御恶意活动。评估这些系统是恶意软件预防研究的关键部分。然而,涵盖不同类型的良性和恶意应用程序来评估恶意软件检测技术的最新数据集通常是不可用的。每天都有成千上万个新发布的应用程序和各种新的恶意活动被发现,保持恶意应用程序数据集的更新是很困难的。本文介绍了一个最新的自适应数据集,其中包括来自不同恶意软件类别的5000个应用程序,可供研究社区使用。这些申请是从500多万份申请中挑选出来的。为了展示如何使用数据集,我们部署了一个流行的恶意软件分析平台,并以自动化的方式生成所有应用程序的详细报告。我们还提供了更新数据集的步骤,并在更新后的样本集上自动执行分析。我们相信,数据集的适应性和自动分析过程将帮助研究人员节省准备数据集的时间,并将更多的精力放在检测技术上。
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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