计算机网络中时间序列异常检测的评价

Hong Nguyen, Arash Hajisafi, Alireza Abdoli, S. H. Kim, C. Shahabi
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引用次数: 1

摘要

任何网络系统中的一个关键问题是故障检测。故障不仅影响源网络,而且由于蝴蝶效应还会通过其他通信网络传播,这使得故障的根本原因更具挑战性。因此,在计算机网络中检测故障和异常是至关重要的。考虑到计算机网络的性质,接收的数据采用时间序列格式,其中每个时间点在时间上依赖于其他时间点。因此,时间序列分析作为处理网络异常检测任务的一种潜在方法脱颖而出。在本文中,我们对多元时间序列异常检测进行了研究,从传统的机器学习技术到深度学习模型。我们表明模型的选择并不像预处理技术的选择那么重要。有趣的是,非线性归一化可以将深度检测器的F1得分提高约20%,并平衡深度检测器对特定类型异常的偏好。我们还研究了异常类型对深度检测器的偏差、时间性能权衡、数据短缺以及弱标记数据对合成和现实数据集的影响,以填补文献中缺失的见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Evaluation of Time-Series Anomaly Detection in Computer Networks
One critical issue in any network systems is failure detection. Failures not only impact the source network but also propagate through other communicating networks due to the butterfly effect, making root causing of failures even more challenging. Therefore, the necessity to detect failures and anomalies in computer networks is fundamental. Given the nature of computer networks, data is received in a time-series format where each time-point has temporal dependencies on others. As a result, time-series analysis stands out as a potential approach to deal with the task of network anomaly detection. In this paper, we conduct studies on multivariate time series anomaly detection, varying from traditional machine learning techniques to deep learning models. We show that the choice of models is not as important as the choice of pre-processing techniques. Interestingly, non-linear normalization can boost the performance of deep detectors by around 20% in terms of F1 score and balance the preference of deep detectors for specific types of anomalies. We also study the bias of anomaly types to deep detectors, time-performance trade-offs, shortage of data, and effects of weakly labeled data on both synthetic and realworld datasets to fill out the missing insights in the literature.
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