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首页> 外文期刊>Informatica Economica >Network Anomaly Detection by Means of Machine Learning: Random Forest Approach with Apache Spark
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Network Anomaly Detection by Means of Machine Learning: Random Forest Approach with Apache Spark

机译:机器学习的网络异常检测:Apache Spark的随机森林方法

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摘要

Nowadays the network security is a crucial issue and traditional intrusion detection systems are not a sufficient way. Hence the intelligent detection systems should have a major role in network security by taking into consideration to process the network big data and predict the anomalies behavior as fast as possible. In this paper, we implemented a well-known supervised algorithm Random Forest Classifier with Apache Spark on NSL-KDD dataset provided by the University of New Brunswick with the accuracy of 78.69% and 35.2% false negative ratio. Empirical results show this approach is well in order to use for intrusion detection system as well as we seeking the best number of trees to be used on Random Forest Classifier for getting higher accuracy and lower cost for the intrusion detection system.
机译:如今,网络安全已成为至关重要的问题,而传统的入侵检测系统还不足以解决这一问题。因此,智能检测系统应考虑到处理网络大数据并尽可能快地预测异常行为,从而在网络安全中起主要作用。在本文中,我们在新不伦瑞克大学提供的NSL-KDD数据集上使用Apache Spark实现了一种著名的监督算法随机森林分类器,其准确性为78.69%,假阴性率为35.2%。实验结果表明,该方法非常适合用于入侵检测系统,并且我们寻求在随机森林分类器上使用的最佳树木数量,以提高入侵检测系统的准确性和成本。

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