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Actionable Knowledge Discovery for Threats Intelligence Support Using a Multi-dimensional Data Mining Methodology

机译:使用多维数据挖掘方法为威胁情报支持提供可行的知识发现

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This paper describes a multi-dimensional knowledge discovery and data mining (KDD) methodology that aims at discovering actionable knowledge related to Internet threats, taking into account domain expert guidance and the integration of domain-specific intelligence during the data mining process. The objectives are twofold: i) to develop global indicators for assessing the prevalence of certain malicious activities on the Internet, and ii) to get insights into the modus operandi of new emerging attack phenomena, so as to improve our understanding of threats. In this paper, we first present the generic aspects of a domain-driven graph-based KDD methodology, which is based on two main components: a clique-based clustering technique and a concepts synthesis process using cliques' intersections. Then, to evaluate the applicability of this approach to our application domain, we use a large dataset of real-world attack traces collected since 2003. Our experimental results show that significant insights can be obtained into the domain of threat intelligence by using this multi-dimensional knowledge discovery method.
机译:本文介绍了多维知识发现和数据挖掘(KDD)方法,其旨在发现与互联网威胁相关的可操作知识,同时考虑到域专家指导和数据挖掘过程中的域特定智能的集成。目的是双重的:i)制定全球指标,以评估互联网上某些恶意活动的普遍存在,以及II)以了解新兴攻击现象的Modus Operandi的见解,以提高我们对威胁的理解。在本文中,我们首先介绍基于域驱动的图形的KDD方法的通用方面,它基于两个主要组成部分:基于Clique的聚类技术和使用Cliques的交叉点的概念合成过程。然后,为了评估这种方法对我们的应用领域的适用性,我们使用自2003年以来收集的实际攻击痕迹的大型数据集。我们的实验结果表明,通过使用这种多次多 - 可以在威胁情报领域获得显着的见解维知识发现方法。

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