Echo-state conditional variational autoencoder for anomaly detection

Suwon Suh, Daniel H. Chae, Hyon-Goo Kang, Seungjin Choi
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引用次数: 62

Abstract

Anomaly detection involves identifying the events which do not conform to an expected pattern in data. A common approach to anomaly detection is to identify outliers in a latent space learned from data. For instance, PCA has been successfully used for anomaly detection. Variational autoencoder (VAE) is a recently-developed deep generative model which has established itself as a powerful method for learning representation from data in a nonlinear way. However, the VAE does not take the temporal dependence in data into account, so it limits its applicability to time series. In this paper we combine the echo-state network, which is a simple training method for recurrent networks, with the VAE, in order to learn representation from multivariate time series data. We present an echo-state conditional variational autoencoder (ES-CVAE) and demonstrate its useful behavior in the task of anomaly detection in multivariate time series data.
回声状态条件变分自编码器异常检测
异常检测涉及识别不符合数据中预期模式的事件。异常检测的一种常用方法是从数据中学习到的潜在空间中识别异常值。例如,PCA已成功地用于异常检测。变分自编码器(VAE)是最近发展起来的一种深度生成模型,它已经成为一种以非线性方式从数据中学习表示的强大方法。但是,VAE没有考虑数据的时间依赖性,因此限制了它对时间序列的适用性。本文将一种简单的递归网络训练方法——回声状态网络与VAE相结合,从多元时间序列数据中学习表征。我们提出了一种回声状态条件变分自编码器(ES-CVAE),并证明了它在多变量时间序列数据异常检测任务中的有用行为。
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