RaDaR: A Real-Word Dataset for AI powered Run-time Detection of Cyber-Attacks

Sareena Karapoola, Nikhilesh Singh, C. Rebeiro, V. Kamakoti
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Abstract

Artificial Intelligence techniques on malware run-time behavior have emerged as a promising tool in the arms race against sophisticated and stealthy cyber-attacks. While data of malware run-time features are critical for research and benchmark comparisons, unfortunately, there is a dearth of real-world datasets due to multiple challenges to their collection. The evasive nature of malware, its dependence on connected real-world conditions to execute, and its potential repercussions pose significant challenges for executing malware in laboratory settings. Consequently, prior open datasets rely on isolated virtual sandboxes to run malware, resulting in data that is not representative of malware behavior in the wild. This paper presents RaDaR, an open real-world dataset for run-time behavioral analysis of Windows malware. RaDaR is collected by executing malware on a real-world testbed with Internet connectivity and in a timely manner, thus providing a close-to-real-world representation of malware behavior. To enable an unbiased comparison of different solutions and foster multiple verticals in malware research, RaDaR provides a multi-perspective data collection and labeling of malware activity. The multi-perspective collection provides a comprehensive view of malware activity across the network, operating system (OS), and hardware. On the other hand, the multi-perspective labeling provides four independent perspectives to analyze the same malware, including its methodology, objective, capabilities, and the information it exfiltrates. To date, RaDaR includes 7 million network packets, 11.3 million OS system call traces, and 3.3 million hardware events of 10,434 malware samples having different methodologies (3 classes) and objectives (9 classes), spread across 30 well-known malware families.
雷达:用于人工智能驱动的网络攻击运行时检测的实时数据集
恶意软件运行时行为的人工智能技术已经成为对抗复杂和隐蔽的网络攻击的军备竞赛中一个很有前途的工具。虽然恶意软件运行时特性的数据对于研究和基准比较至关重要,但不幸的是,由于收集这些数据的多重挑战,缺乏真实世界的数据集。恶意软件的规避性质,它对连接的现实世界条件的依赖,以及它的潜在影响,对在实验室环境中执行恶意软件构成了重大挑战。因此,以前的开放数据集依赖于孤立的虚拟沙箱来运行恶意软件,导致数据不能代表恶意软件的行为。本文介绍了RaDaR,一个用于Windows恶意软件运行时行为分析的开放真实世界数据集。雷达是通过在具有互联网连接的真实世界测试平台上执行恶意软件及时收集的,从而提供了接近真实世界的恶意软件行为表示。为了能够对不同的解决方案进行公正的比较,并促进恶意软件研究中的多个垂直领域,RaDaR提供了恶意软件活动的多角度数据收集和标记。多角度集合提供了跨网络、操作系统(OS)和硬件的恶意软件活动的全面视图。另一方面,多视角标签提供了四个独立的视角来分析相同的恶意软件,包括其方法,目标,功能和它所泄露的信息。迄今为止,RaDaR包括700万个网络数据包,1130万个操作系统调用跟踪,以及10434个恶意软件样本的330万个硬件事件,这些样本具有不同的方法(3类)和目标(9类),分布在30个知名的恶意软件家族中。
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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