由情况驱动的动态安全管理:对日志进行探索性分析,以识别安全情况

A. Benzekri, R. Laborde, Arnaud Oglaza, Darine Rammal, F. Barrère
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引用次数: 5

摘要

态势感知包括“在一定时间和空间范围内对环境要素的感知,对其意义的理解,以及对其近期状态的预测”。了解安全状况是必须的,这样才能针对网络安全攻击发起适当的安全反应。安全事件和事件管理解决方案部署在安全运营中心内。一些供应商提出了基于机器学习的方法,通过分析网络行为来检测入侵。但是,像Wannacry和NotPetya这样导致数十万台电脑关闭的网络攻击表明,网络监控和监控解决方案仍然不够。检测这些复杂的攻击(又称高级持久威胁)需要安全管理员保留大量日志,以备检测到问题时使用,并涉及对过去安全事件的调查。这种方法产生了大量的数据,必须在适当的时候进行分析,以检测任何意外或引起的事件。与此同时,安全管理员还没有足够的经验来完成这样的任务,并且缺乏所需的数据科学技能。因此,大量的数据是可用的,但仍未被探索,这使得许多妥协的指标在雷达之下。在态势感知概念的基础上,我们开发了一个态势驱动框架,称为dynSMAUG,用于动态安全管理。这种方法简化了动态系统的安全管理,并允许在高级抽象(接近安全需求)上规范安全策略。这篇特邀论文旨在揭示来自网络安全专家的真实安全情况,并展示利用复杂事件处理技术从大量日志中识别和提取安全情况的探索性分析技术的结果。这些结果有助于扩展dynSMAUG解决方案。
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Dynamic security management driven by situations: An exploratory analysis of logs for the identification of security situations
Situation awareness consists of "the perception of the elements in the environment within a volume of time and space, the comprehension of their meaning, and the projection of their status in the near future". Being aware of the security situation is then mandatory to launch proper security reactions in response to cybersecurity attacks. Security Incident and Event Management solutions are deployed within Security Operation Centers. Some vendors propose machine learning based approaches to detect intrusions by analysing networks behaviours. But cyberattacks like Wannacry and NotPetya, which shut down hundreds of thousands of computers, demonstrated that networks monitoring and surveillance solutions remain insufficient. Detecting these complex attacks (a.k.a. Advanced Persistent Threats) requires security administrators to retain a large number of logs just in case problems are detected and involve the investigation of past security events. This approach generates massive data that have to be analysed at the right time in order to detect any accidental or caused incident. In the same time, security administrators are not yet seasoned to such a task and lack the desired skills in data science. As a consequence, a large amount of data is available and still remains unexplored which leaves number of indicators of compromise under the radar. Building on the concept of situation awareness, we developed a situation-driven framework, called dynSMAUG, for dynamic security management. This approach simplifies the security management of dynamic systems and allows the specification of security policies at a high-level of abstraction (close to security requirements). This invited paper aims at exposing real security situations elicitation, coming from networks security experts, and showing the results of exploratory analysis techniques using complex event processing techniques to identify and extract security situations from a large volume of logs. The results contributed to the extension of the dynSMAUG solution.
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