分类法使用集团渗透法建立威胁观测站

Romina Torres, Nicolás González, Mathías Cabrera, Rodrigo Salas
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引用次数: 0

摘要

网络攻击每天都在增加,要求安全事件响应团队提前主动确定潜在威胁。尽管像Twitter这样的社交网络是一个丰富的、最新的信息来源,用户可以在其中发布关于不同主题的推文,但要有效地获得支持特定主题(如网络攻击)决策的结果是很复杂的。因此,在这项工作中,我们建议在推文语料库上使用基于派系渗透方法的离线挖掘过程,以生成一个关于网络攻击的索引知识库。研究结果很有希望观察到进化过程中的威胁。然后,为了正确显示结果,我们生成了一个观测站原型,允许网络安全研究人员探索时间和空间上的威胁。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Taxonomies using the clique percolation method for building a threats observatory
Cyberattacks are increasing every day, demanding that security incident response teams proactively determine potential threats early. Although social networks such as Twitter are a rich and up-to-date source of information where users use to tweet about different topics, it is complex to efficiently and effectively obtain results that support decision-making on a specific subject, such as cyberattacks. Therefore, in this work, we propose to use an offline mining process based on the clique percolation method over a corpus of tweets in order to generate an indexed knowledge base about cyberattacks. Results are promising to observe threats under evolution. Then, to show results properly, we generate an observatory prototype to allow cybersecurity researchers to explore threats over time and space.
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