Dynamic Countermeasure Knowledge for Intrusion Response Systems

Kieran Hughes, K. Mclaughlin, S. Sezer
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引用次数: 4

Abstract

Significant advancements in Intrusion Detection Systems has led to improved alerts. However, Intrusion Response Systems which aim to automatically respond to these alerts, is a research area which is not yet advanced enough to benefit from full automation. In Security Operations Centres, analysts can implement countermeasures using knowledge and past experience to adapt to new attacks. Attempts at automated Intrusion Response Systems fall short when a new attack occurs to which the system has no specific knowledge or effective countermeasure to apply, even leading to overkill countermeasures such as restarting services and blocking ports or IPs. In this paper, a countermeasure standard is proposed which enables countermeasure intelligence sharing, automated countermeasure adoption and execution by an Intrusion Response System. An attack scenario is created on an emulated network using the Common Open Research Emulator, where an insider attack attempts to exploit a buffer overflow on an Exim mail server. Experiments demonstrate that an Intrusion Response System with dynamic countermeasure knowledge can stop attacks that would otherwise succeed with a static predefined countermeasure approach.
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入侵响应系统的动态对策知识
入侵检测系统的重大进步导致了警报的改进。然而,旨在自动响应这些警报的入侵响应系统是一个尚不够先进的研究领域,无法从完全自动化中受益。在安全运营中心,分析人员可以利用知识和过去的经验实施对策,以适应新的攻击。当新的攻击发生时,系统没有特定的知识或有效的应对措施,甚至导致重新启动服务和阻止端口或ip等过度的应对措施,自动入侵响应系统的尝试就会失败。本文提出了一种对抗标准,实现了入侵响应系统对对抗情报的共享、对对抗的自动采用和执行。使用Common Open Research Emulator在模拟网络上创建攻击场景,其中内部攻击试图利用Exim邮件服务器上的缓冲区溢出。实验表明,具有动态对抗知识的入侵响应系统能够有效阻止静态预定义对抗方法无法成功实施的攻击。
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