Autoencoder for Network Anomaly Detection

Won Park, Nicolas Ferland, Wenting Sun
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引用次数: 1

Abstract

In modern network and telecommunication systems, hundreds of thousands of nodes are interconnected by telecommunication links to exchange information between nodes. The complexity of the system and the stringent requirements on service level agreement makes it necessary to monitor network performance intelligently and enable preventative measures to ensure network performance. Anomaly detection - the task of identifying events that deviate from the normal behavior - continues to be an important task. However, techniques traditionally employed by industry on real-world data - DBSCAN and MAD - have severe limitations, such as the need to manually tune and calibrate the algorithms frequently and limited capacity to capture past history in the model. Lately, there has been much progression in applying machine learning techniques, specifically autoencoders to the problem of AD. However, thus far, few of these techniques have been tested for use in scenarios involving multivariate timeseries data that would be faced by telecommunication companies. We propose a novel auto encoder based deep learning framework called ERICA including a new pipeline to address these shortcomings. Our approach has been demonstrated to achieve better performance (an increase in F-score by over 10%) and significantly enhance the scalability.
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网络异常检测的自动编码器
在现代网络和电信系统中,成千上万的节点通过电信链路相互连接,在节点之间交换信息。由于系统的复杂性和对服务水平协议的严格要求,需要对网络性能进行智能监控,并启用预防措施,以确保网络性能。异常检测——识别偏离正常行为的事件的任务——仍然是一项重要的任务。然而,业界在实际数据上使用的传统技术(DBSCAN和MAD)存在严重的局限性,例如需要频繁地手动调整和校准算法,以及在模型中捕获过去历史的能力有限。最近,在应用机器学习技术,特别是自动编码器解决AD问题方面取得了很大进展。然而,到目前为止,这些技术中很少有被测试用于涉及电信公司将面临的多变量时间序列数据的场景。我们提出了一种新的基于自动编码器的深度学习框架,称为ERICA,其中包括一个新的管道来解决这些缺点。我们的方法已被证明可以实现更好的性能(f分数提高10%以上),并显著提高可伸缩性。
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