MS-LSTM:用于BGP异常检测的多尺度LSTM模型

Min Cheng, Qian Xu, Jianming Lv, Wenyin Liu, Qing Li, Jianping Wang
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引用次数: 54

摘要

检测异常边界网关协议(BGP)流量对于提高互联网的安全性和鲁棒性具有重要意义。现有的解决方案采用经典分类器,根据当前时刻的交通特征进行实时决策。然而,由于动态互联网流量中频繁出现突发和噪声,基于短期特征的决策不可靠。为了解决这一问题,我们提出了一种多尺度长短期记忆(LSTM)模型MS-LSTM,该模型将互联网流量视为一个多维时间序列,并在滑动时间窗口中从历史特征中学习流量模式。此外,我们发现采用不同的时间尺度对交通流进行预处理对分类器的性能有很大的影响。本文进行了全面的实验,结果表明,适当的时间尺度可以使LSTM的准确率提高10%左右,并且可以提高所有传统机器学习方法的准确率。其中,最优时间尺度为8的MS-LSTM在最佳情况下可以达到99.5%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MS-LSTM: A multi-scale LSTM model for BGP anomaly detection
Detecting anomalous Border Gateway Protocol (BGP) traffic is significantly important in improving both security and robustness of the Internet. Existing solutions apply classic classifiers to make real-time decision based on the traffic features of present moment. However, due to the frequently happening burst and noise in dynamic Internet traffic, the decision based on short-term features is not reliable. To address this problem, we propose MS-LSTM, a multi-scale Long Short-Term Memory (LSTM) model to consider the Internet flow as a multi-dimensional time sequence and learn the traffic pattern from historical features in a sliding time window. In addition, we find that adopting different time scale to preprocess the traffic flow has great impact on the performance of all classifiers. In this paper, comprehensive experiments are conducted and the results show that a proper time scale can improve about 10% accuracy of LSTM as well as all conventional machine learning methods. Particularly, MS-LSTM with optimal time scale 8 can achieve 99.5% accuracy in the best case.
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