检测与网络安全相关的Twitter账户和不同的子组:一种多分类方法

Mohamad Imad Mahaini, Shujun Li
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引用次数: 1

摘要

许多网络安全专家、组织和网络犯罪分子都是在线社交网络(osn)的活跃用户。因此,检测osn上的网络安全相关账户并监控其活动,可以用于网络威胁情报、检测和预防osn上的网络攻击和在线危害、评估osn上网络安全意识活动的有效性等不同目的。在本文中,我们报告了我们开发几个基于机器学习的分类器的工作,这些分类器用于检测Twitter上的网络安全相关帐户,包括用于检测一般网络安全相关帐户的基线分类器,以及用于检测网络安全相关帐户的三个子集(个人,黑客和学术界)的三个子分类器。为了训练和测试分类器,我们采用了一种更系统的方法(基于网络安全分类法、实时tweet采样和众包)来构建网络安全相关帐户的数据集,并为每个帐户分配多个标签。对于每个分类器,我们考虑了比过去研究中使用的更丰富的特征集。在测试的五个机器学习模型中,随机森林模型的性能最好:基线分类器的准确率为93%,三个子分类器的准确率为88-91%。我们还研究了基线分类器的特征约简,并表明仅使用六个特征我们就可以达到相同的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting cyber security related Twitter accounts and different sub-groups: a multi-classifier approach
Many cyber security experts, organizations, and cyber criminals are active users on online social networks (OSNs). Therefore, detecting cyber security related accounts on OSNs and monitoring their activities can be very useful for different purposes such as cyber threat intelligence, detecting and preventing cyber attacks and online harms on OSNs, and evaluating the effectiveness of cyber security awareness activities on OSNs. In this paper, we report our work on developing several machine learning based classifiers for detecting cyber security related accounts on Twitter, including a base-line classifier for detecting cyber security related accounts in general, and three sub-classifiers for detecting three subsets of cyber security related accounts (individuals, hackers, and academia). To train and test the classifiers, we followed a more systemic approach (based on a cyber security taxonomy, real-time sampling of tweets, and crowdsourcing) to construct a dataset of cyber security related accounts with multiple tags assigned to each account. For each classifier, we considered a richer set of features than those used in past studies. Among five machine learning models tested, the Random Forest model achieved the best performance: 93% for the baseline classifier, 88-91% for the three sub-classifiers. We also studied feature reduction of the base-line classifier and showed that using just six features we can already achieve the same performance.
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