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An Abnormal Network Traffic Detection Algorithm Based on Big Data Analysis

机译:基于大数据分析的网络流量异常检测算法

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Anomaly network detection is a very important way to analyze and detect malicious behavior in network. How to effectively detect anomaly network flow under the pressure of big data is a very important area, which has attracted more and more researchers’ attention. In this paper, we propose a new model based on big data analysis, which can avoid the influence brought by adjustment of network traffic distribution, increase detection accuracy and reduce the false negative rate. Simulation results reveal that, compared with k-means, decision tree and random forest algorithms, the proposed model has a much better performance, which can achieve a detection rate of 95.4% on normal data, 98.6% on DoS attack, 93.9% on Probe attack, 56.1% on U2R attack, and 77.2% on R2L attack.
机译:异常网络检测是分析和检测网络中恶意行为的一种非常重要的方法。如何有效地检测大数据压力下的网络异常流量是一个非常重要的领域,已经引起了越来越多研究者的关注。本文提出了一种基于大数据分析的新模型,该模型可以避免网络流量分配调整带来的影响,提高检测精度,降低误报率。仿真结果表明,与k-means,决策树和随机森林算法相比,该模型具有更好的性能,正常数据的检测率达到95.4%,DoS攻击的检测率达到98.6%,Probe的检测率为93.9%。攻击,U2R攻击占56.1%,R2L攻击占77.2%。

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