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The prediction role of hidden Markov model in intrusion detection

机译:隐马尔可夫模型在入侵检测中的预测作用

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Information security is an issue of serious global concern. The development of Internet increases the security risk of information systems greatly. This paper utilizes HMM (hidden Markov model) to realize the forecast ability of IDS (intrusion detection system). In this model, a command sequence or a control information sequence is regarded as a series of state transitions with a certain probability. The performance of several algorithms is compared such as F-BP (forward-back propagation) algorithm, Viterbi learning algorithm, EM (expectation maximization) algorithm, etc. In order to provide a soft boundary to the decision-making, fuzzy math is also introduced to this model. By this means, the intelligence of the IDS is improved and some decision-making abilities and reasoning abilities are offered to IDS. As well this paper reports the results about our project.
机译:信息安全是全球严重关注的问题。互联网的发展大大增加了信息系统的安全风险。本文利用隐马尔可夫模型(HMM)来实现入侵检测系统IDS的预测能力。在该模型中,命令序列或控制信息序列被视为具有一定概率的一系列状态转换。比较了几种算法的性能,例如F-BP(前向传播)算法,Viterbi学习算法,EM(期望最大化)算法等。为了给决策提供软边界,模糊数学也是介绍了此模型。通过这种方式,可以提高IDS的智能,并为IDS提供一些决策能力和推理能力。同样,本文还报告了有关我们项目的结果。

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