DC-VAE, Fine-grained Anomaly Detection in Multivariate Time-Series with Dilated Convolutions and Variational Auto Encoders

Gastón García González, S. Tagliafico, Alicia Fernández, Gabriel Gómez, José Acuña, P. Casas
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引用次数: 3

Abstract

Due to its unsupervised nature, anomaly detection plays a central role in cybersecurity, in particular on the detection of unknown attacks. A major source of cybersecurity data comes in the form of multivariate time-series (MTS), representing the temporal evolution of multiple, usually correlated measurements. Despite the many approaches available in the literature for time-series anomaly detection, the automatic detection of abnormal events in MTS remains a complex problem. In this paper we introduce DC-VAE, a novel approach to anomaly detection in MTS, leveraging convolutional neural networks (CNNs) and variational auto encoders (VAEs). DC-VAE detects anomalies in time-series data, exploiting temporal information without sacrificing computational and memory resources. In particular, instead of using recursive neural networks, large causal filters, or many layers, DC-VAE relies on dilated convolutions (dc) to capture long and short term phenomena in the data, avoiding complex and less-efficient deep architectures, simplifying learning. We evaluate dc-vae on the detection of anoma-lies on a large-scale, multi-dimensional network monitoring dataset collected at an operational mobile internet service provider (isp), where anomalous events were manually labeled during a time span of 7-months, at a five-minutes granularity. Results show the main properties and advantages introduced by VAEs for time-series anomaly detection, as well as the out-performance of dilated convolutions as compared to standard VAEs for time-series modeling.
基于扩展卷积和变分自编码器的多变量时间序列的细粒度异常检测
由于其无监督的性质,异常检测在网络安全中起着核心作用,特别是在检测未知攻击方面。网络安全数据的主要来源是以多变量时间序列(MTS)的形式出现的,它代表了多个通常相关的测量值的时间演变。尽管文献中有许多方法可用于时间序列异常检测,但MTS异常事件的自动检测仍然是一个复杂的问题。本文介绍了一种基于卷积神经网络(cnn)和变分自编码器(vae)的MTS异常检测新方法DC-VAE。DC-VAE检测时间序列数据中的异常,在不牺牲计算和内存资源的情况下利用时间信息。特别是,dc - vae没有使用递归神经网络、大型因果过滤器或多层,而是依赖于扩展卷积(dc)来捕获数据中的长期和短期现象,避免了复杂和低效的深度架构,简化了学习。我们在一家运营的移动互联网服务提供商(isp)收集的大规模多维网络监控数据集上评估了dc-vae对异常的检测,其中异常事件在7个月的时间跨度内以5分钟的粒度进行了手动标记。结果表明了扩展卷积在时间序列异常检测中的主要特性和优势,以及扩展卷积在时间序列建模中的优于标准扩展卷积的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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