A finite context intrusion prediction model for cloud systems with a probabilistic suffix tree
Abstract
The success of the cloud computing paradigm depends on how effectively the cloud infrastructures will be able to instantiate and dynamically maintain computing platforms that meet Quality of Service (QoS) requirements. Most of the current security technologies do not provide early warnings about future ongoing attacks. This paper introduces new techniques in prediction model that is built based on Variable Order Markov Model and Probabilistic Suffix Tree. The proposed model uses a risk assessment model to evaluate the overall risk in the cloud system. According to our experiments on DARPA 2000 dataset, the prediction model has successfully signaled early warning alerts 58.983 minutes before the launching of the LLDDoS1.0 attack and 43.93 minutes before the launching of the LLDDoS2.0. This gives the system administrator or an autonomic system ample time to take corrective action. 2014 IEEE.
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