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Steps towards continual learning in multivariate time-series anomaly detection using variational autoencoders

Gastón García González, Pedro Casas, Alba Schmahl Fernandez, Gabriel Gómez

202213 citationsDOI

Abstract

We present DC-VAE, an approach to network anomaly detection in multivariate time-series (MTS), using Variational Auto Encoders (VAEs) and Dilated Convolutional Neural Networks (CNN). DC-VAE detects anomalies in MTS data through a single model, exploiting temporal and spatial MTS information. We showcase DC-VAE in different MTS datasets, and portray its future application in a continual learning framework, exploiting the generative properties of the underlying generative model to deal with continuously evolving data, avoiding catastrophic forgetting. We showcase the functioning of DC-VAE in the event of concept drifts, and propose the application of a novel approach to generative-driven continual learning, introducing the Deep Generative Replay model.

Topics & Concepts

Computer scienceArtificial intelligenceGenerative grammarAnomaly detectionForgettingAutoencoderGenerative modelRecurrent neural networkConvolutional neural networkDeep learningMachine learningTime seriesMultivariate statisticsSeries (stratigraphy)Anomaly (physics)Artificial neural networkPattern recognition (psychology)PhilosophyCondensed matter physicsPaleontologyLinguisticsBiologyPhysicsAnomaly Detection Techniques and ApplicationsArtificial Immune Systems ApplicationsData Stream Mining Techniques
Steps towards continual learning in multivariate time-series anomaly detection using variational autoencoders | Litcius