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Intrusion Detection System using Bayesian Network and Hidden Markov Model

机译:使用贝叶斯网络和隐马尔可夫模型的入侵检测系统

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Across the globe, billions of dollars are spending every year to provide security to the network systems to prevent the intrusions. Some consider the disruption of the vital systems as a serious threat which disables the work of hospitals, banks, military and various internet services across the world. To avert this impending threat, there are many possible solutions: one of these solutions is intrusion detection systems (IDS). The paper proposes to discuss the IDS model in its elaboration using Bayesian Network and the Hidden Markov Model (HMM) approach with KDDCUP dataset. The IDS framework has been designed with various levels of processing such as model learning with training data and constructing the Bayesian Network and this structure has been used as HMM state transition diagram. The preprocessed KDDCUP dataset has been used to train and test the model. The IDS model has been trained and tested for normal and attack type connection records separately. The results evince that the performance of the model is of high order for classification of normal and intrusions attacks.
机译:在全球范围内,数十亿美元,每年支出提供安全的网络系统,以防止入侵。一些人认为重要的系统,它禁用医院,银行,军工及各类互联网服务在世界各地的工作构成严重威胁的破坏。为了避免这个即将到来的威胁,有很多可能的解决方案:这些解决方案之一是入侵检测系统(IDS)。本文提出讨论使用贝叶斯网络,并与KDDCUP数据集隐马尔可夫模型(HMM)的方式在其拟定的IDS模式。 IDS的框架的设计具有各种级别的处理,诸如模型学习与训练数据和构建贝叶斯网络的这种结构已被用作HMM状态转变图。经过预处理的KDDCUP数据集已经被用于训练和测试模型。 IDS的模型已被训练和正常和攻击型连接记录单独测试。结果表示出了模型的性能是高为了正常和入侵攻击的分类。

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