恶意软件自动分析

César Augusto Borges de Andrade, C. Gomes de Mello, J. C. Duarte
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引用次数: 13

摘要

恶意代码分析允许识别恶意软件的行为特征,换句话说,它如何在操作系统中行动,使用什么混淆技术,哪些执行流导致主要计划行为,使用网络操作,文件下载操作,用户和系统的信息捕获,访问记录,以及其他活动,以了解恶意软件如何工作,创建方法来识别具有类似行为的新恶意软件。以及防御的方法。手动扫描签名生成变得不切实际,因为与新恶意软件的传播和创建速度相比,它需要大量的时间。因此,本文建议在这种情况下使用沙盒技术和机器学习技术来自动识别软件。本文除了提出了一种不同的、更快的恶意软件检测方法外,对恶意软件识别任务的准确率达到了90%以上。
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Malware Automatic Analysis
The malicious code analysis allows malware behavior characteristics to be identified, in other words how does it act in the operating system, what obfuscation techniques are used, which execution flows lead to the primary planned behavior, use of network operations, files downloading operations, user and system's information capture, access to records, among other activities, in order to learn how malware works, to create ways to identify new malicious softwares with similar behavior, and ways of defense. Manual scanning for signature generation becomes impractical, since it requires a lot of time compared to new malwares' dissemination and creation speed. Therefore, this paper proposes the use of sandbox techniques and machine learning techniques to automate software identification in this context. This paper, besides presenting a different and faster approach to malware detection, has achieved an accuracy rate of over 90% for the task of malware identifying.
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