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Selecting System Specific Cybersecurity Attack Patterns Using Topic Modeling

机译:使用主题建模选择系统特定的网络安全攻击模式

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摘要

One challenge for cybersecurity experts is deciding which type of attack would be successful against the system they wish to protect. Often, this challenge is addressed in an ad hoc fashion and is highly dependent upon the skill and knowledge base of the expert. In this study, we present a method for automatically ranking attack patterns in the Common Attack Pattern Enumeration and Classification (CAPEC) database for a given system. This ranking method is intended to produce suggested attacks to be evaluated by a cybersecurity expert and not a definitive ranking of the "best" attacks. The proposed method uses topic modeling to extract hidden topics from the textual description of each attack pattern and learn the parameters of a topic model. The posterior distribution of topics for the system is estimated using the model and any provided text. Attack patterns are ranked by measuring the distance between each attack topic distribution and the topic distribution of the system using KL divergence.
机译:网络安全专家面临的一个挑战是,确定对他们希望保护的系统成功的攻击类型。通常,这种挑战是临时解决的,并且高度依赖专家的技能和知识基础。在这项研究中,我们提出了一种在给定系统的通用攻击模式枚举和分类(CAPEC)数据库中自动对攻击模式进行排名的方法。此排名方法旨在产生建议的攻击,以供网络安全专家评估,而不是对“最佳”攻击进行确定的排名。所提出的方法使用主题建模从每个攻击模式的文本描述中提取隐藏的主题,并学习主题模型的参数。使用该模型和任何提供的文本来估计系统主题的后验分布。通过测量每个攻击主题分布与使用KL散度的系统主题分布之间的距离来对攻击模式进行排名。

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