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arxiv 2102.01331 v1 pith:SKJYPTEZ submitted 2021-02-02 cs.LG cs.AI

Anomaly Detection of Time Series with Smoothness-Inducing Sequential Variational Auto-Encoder

classification cs.LG cs.AI
keywords modeldetectionseriestimevariationalanomalyauto-encodersmoothness-inducing
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Deep generative models have demonstrated their effectiveness in learning latent representation and modeling complex dependencies of time series. In this paper, we present a Smoothness-Inducing Sequential Variational Auto-Encoder (SISVAE) model for robust estimation and anomaly detection of multi-dimensional time series. Our model is based on Variational Auto-Encoder (VAE), and its backbone is fulfilled by a Recurrent Neural Network to capture latent temporal structures of time series for both generative model and inference model. Specifically, our model parameterizes mean and variance for each time-stamp with flexible neural networks, resulting in a non-stationary model that can work without the assumption of constant noise as commonly made by existing Markov models. However, such a flexibility may cause the model fragile to anomalies. To achieve robust density estimation which can also benefit detection tasks, we propose a smoothness-inducing prior over possible estimations. The proposed prior works as a regularizer that places penalty at non-smooth reconstructions. Our model is learned efficiently with a novel stochastic gradient variational Bayes estimator. In particular, we study two decision criteria for anomaly detection: reconstruction probability and reconstruction error. We show the effectiveness of our model on both synthetic datasets and public real-world benchmarks.

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Cited by 2 Pith papers

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  2. Detecting the Undetectable: Enhancing Unsupervised time series Anomaly Detection via Active Learning

    cs.LG 2026-07 unverdicted novelty 4.0

    Active learning with masked reconstruction and minimax training raises AUC by 12.39% across 28 test cases on four multivariate datasets and seven unsupervised backbones.