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Unsupervised Scalable Representation Learning for Multivariate Time Series

About

Time series constitute a challenging data type for machine learning algorithms, due to their highly variable lengths and sparse labeling in practice. In this paper, we tackle this challenge by proposing an unsupervised method to learn universal embeddings of time series. Unlike previous works, it is scalable with respect to their length and we demonstrate the quality, transferability and practicability of the learned representations with thorough experiments and comparisons. To this end, we combine an encoder based on causal dilated convolutions with a novel triplet loss employing time-based negative sampling, obtaining general-purpose representations for variable length and multivariate time series.

Jean-Yves Franceschi, Aymeric Dieuleveut, Martin Jaggi• 2019

Related benchmarks

TaskDatasetResultRank
Anomaly DetectionSMD
F1 Score85.03
375
Anomaly DetectionSWaT
F1 Score85.09
348
Time Series ImputationETTm1
MSE0.516
159
Time-series classificationSelfRegulationSCP2
Accuracy55.6
148
Time-series classificationHeartbeat
Accuracy75.6
131
Time-series classificationSelfRegulationSCP1
Accuracy84.6
123
Anomaly DetectionSMAP
F1 Score70.45
114
Time-series classificationUWaveGestureLibrary
Accuracy88.4
71
Time-series classificationPEMS-SF
Accuracy68.8
69
Time-series classificationEthanolConcentration
Accuracy32.7
63
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