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Evolving HMMs for Network Anomaly Detection – Learning through Evolutionary Computation

机译:不断发展的用于网络异常检测的HMM –通过进化计算学习

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This paper reports the results of a system that performs network anomaly detection through the use of Hidden Markov Models (HMMs). The HMMs used to detect anomalies are designed and trained using Genetic Algorithms (GAs). The use of GAs helps automating the use of HMMs, by liberating users from the need of statistical knowledge, assumed by software that trains HMMs from data. The number of states, connections and weights, and probability distributions of states are determined by the GA. Results are compared to those obtained with the Baum-Welch algorithm, proving that in all cases that we tested GA outperforms Baum-Welch. The best of the evolved HMMs was used to perform anomaly detection in network traffic activity with real data.
机译:本文报告了通过使用隐马尔可夫模型(HMM)执行网络异常检测的系统的结果。使用遗传算法(GA)设计和训练用于检测异常的HMM。通过将用户从统计知识的需求中解放出来,GAs的使用可以帮助用户自动化HMM的使用,而统计知识是由训练HMM的软件假定的。状态的数量,连接和权重以及状态的概率分布由GA确定。将结果与使用Baum-Welch算法获得的结果进行比较,证明在所有情况下我们测试的GA均优于Baum-Welch。演进中的最佳HMM被用于对具有真实数据的网络流量活动进行异常检测。

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