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A Finite State Hidden Markov Model for Predicting Multistage Attacks in Cloud Systems

机译:预测云系统中多阶段攻击的有限状态隐马尔可夫模型

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Cloud computing significantly increased the security threats because intruders can exploit the large amount of cloud resources for their attacks. However, most of the current security technologies do not provide early warnings about such attacks. This paper presents a Finite State Hidden Markov prediction model that uses an adaptive risk approach to predict multi-staged cloud attacks. The risk model measures the potential impact of a threat on assets given its occurrence probability. The attacks prediction model was integrated with our autonomous cloud intrusion detection framework (ACIDF) to raise early warnings about attacks to the controller so it can take proactive corrective actions before the attacks pose a serious security risk to the system. According to our experiments on DARPA 2000 dataset, the proposed prediction model has successfully fired the early warning alerts 39.6 minutes before the launching of the LLDDoS1.0 attack. This gives the auto response controller ample time to take preventive measures.
机译:云计算大大增加了安全威胁,因为入侵者可以利用大量的云资源来进行攻击。但是,当前大多数安全技术都没有提供有关此类攻击的预警。本文提出了一种有限状态隐马尔可夫预测模型,该模型使用自适应风险方法来预测多阶段云攻击。风险模型根据给定的威胁发生概率来衡量威胁对资产的潜在影响。攻击预测模型已与我们的自主云入侵检测框架(ACIDF)集成在一起,以向控制器发出有关攻击的预警,因此它可以在攻击对系统造成严重的安全风险之前采取主动的纠正措施。根据我们在DARPA 2000数据集上的实验,所提出的预测模型已在LLDDoS1.0攻击发起前39.6分钟成功触发了预警警报。这使自动响应控制器有足够的时间采取预防措施。

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