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Time Series Change Point Detection with Self-Supervised Contrastive Predictive Coding

Shohreh Deldari, Daniel V. Smith, Hao Xue, Flora D. Salim

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Abstract

Change Point Detection (CPD) methods identify the times associated with changes in the trends and properties of time series data in order to describe the underlying behaviour of the system. For instance, detecting the changes and anomalies associated with web service usage, application usage or human behaviour can provide valuable insights for downstream modelling tasks. We propose a novel approach for self-supervised Time Series Change Point detection method based on Contrastive Predictive coding (TS − CP2). TS − CP2 is the first approach to employ a contrastive learning strategy for CPD by learning an embedded representation that separates pairs of embeddings of time adjacent intervals from pairs of interval embeddings separated across time. Through extensive experiments on three diverse, widely used time series datasets, we demonstrate that our method outperforms five state-of-the-art CPD methods, which include unsupervised and semi-supervised approaches. TS − CP2 is shown to improve the performance of methods that use either handcrafted statistical or temporal features by 79.4% and deep learning-based methods by 17.0% with respect to the F1-score averaged across the three datasets.

Topics & Concepts

Change detectionComputer scienceArtificial intelligenceTime seriesSeries (stratigraphy)Coding (social sciences)Pattern recognition (psychology)Predictive codingRepresentation (politics)Interval (graph theory)Time pointMachine learningPoint (geometry)Data miningAnomaly detectionPoint processResidualAlgorithmDeep learningFeature learningStatistical learningBasis (linear algebra)Statistical modelUnsupervised learningTime Series Analysis and ForecastingAnomaly Detection Techniques and ApplicationsMental Health Research Topics