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Hierarchical management of large-scale malware data

机译:大规模恶意软件数据的分级管理

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As the pace of generation of new malware accelerates, clustering and classifying newly discovered malware requires new approaches to data management. We describe our Big Data approach to managing malware to support effective and efficient malware analysis on large and rapidly evolving sets of malware. The key element of our approach is a hierarchical organization of the malware, which organizes malware into families, maintains a rich description of the relationships between malware, and facilitates efficient online analysis of new malware as they are discovered. Using clustering evaluation metrics, we show that our system discovers malware families comparable to those produced by traditional hierarchical clustering algorithms, while scaling much better with the size of the data set. We also show the flexibility of our system as it relates to substituting various data representations, methods of comparing malware binaries, clustering algorithms, and other factors. Our approach will enable malware analysts and investigators to quickly understand and quantify changes in the global malware ecosystem.
机译:随着新恶意软件生成速度的加快,对新发现的恶意软件进行群集和分类需要使用新的数据管理方法。我们描述了管理恶意软件的大数据方法,以支持对大型且快速发展的恶意软件进行有效且高效的恶意软件分析。我们方法的关键要素是恶意软件的分层组织,它将恶意软件组织到各个家族中,维护对恶意软件之间关系的丰富描述,并在发现新恶意软件时促进对其进行有效的在线分析。使用聚类评估指标,我们表明我们的系统发现了与传统层次聚类算法产生的恶意软件家族相当的恶意软件家族,同时随着数据集的大小进行了更好的扩展。我们还显示了系统的灵活性,因为它涉及替换各种数据表示形式,比较恶意软件二进制文件的方法,聚类算法以及其他因素。我们的方法将使恶意软件分析师和研究人员能够快速了解​​和量化全球恶意软件生态系统中的变化。

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