关于网络钓鱼和恶意软件 URL 的 VirusTotal 报告的大规模研究和分类

Euijin Choo, Mohamed Nabeel, Doowon Kim, Ravindu De Silva, Ting Yu, Issa Khalil
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引用次数: 0

摘要

VirusTotal (VT) 是一种广泛使用的扫描服务,供研究人员和从业人员标记恶意实体并预测新的安全威胁。遗憾的是,最终用户对 VT URL 扫描仪如何判定实体的恶意程度及其参与的攻击类型(如网络钓鱼或恶意软件托管网站)知之甚少。在本文中,我们从以下几个方面对 VT URL 扫描仪针对不同攻击类型的恶意 URL 的行为进行了系统的比较研究:1)检测专业性;2)稳定性;3)扫描仪之间的相关性;4)领先/滞后行为。我们的研究结果表明,VT 扫描仪在检测和攻击类型分类方面普遍存在意见分歧,这给确定 URL 的恶意程度并根据不同攻击类型及时采取缓解措施带来了挑战。这促使我们提出一种新的高精度分类器,帮助在早期阶段正确识别恶意 URL 的攻击类型。这反过来又有助于从业人员更好地进行威胁汇总,并针对不同的攻击类型选择适当的缓解措施。
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A Large Scale Study and Classification of VirusTotal Reports on Phishing and Malware URLs
VirusTotal (VT) is a widely used scanning service for researchers and practitioners to label malicious entities and predict new security threats. Unfortunately, it is little known to the end-users how VT URL scanners decide on the maliciousness of entities and the attack types they are involved in (e.g., phishing or malware-hosting websites). In this paper, we conduct a systematic comparative study on VT URL scanners' behavior for different attack types of malicious URLs, in terms of 1) detection specialties, 2) stability, 3) correlations between scanners, and 4) lead/lag behaviors. Our findings highlight that the VT scanners commonly disagree with each other on their detection and attack type classification, leading to challenges in ascertaining the maliciousness of a URL and taking prompt mitigation actions according to different attack types. This motivates us to present a new highly accurate classifier that helps correctly identify the attack types of malicious URLs at the early stage. This in turn assists practitioners in performing better threat aggregation and choosing proper mitigation actions for different attack types
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