Utilizing Expert Features for Contrastive Learning of Time-Series Representations

Proceedings of the 39th International Conference on Machine Learning (ICML), PMLR 162:16969-16989, 2022 We present an approach that incorporates expert knowledge for time-series representation learning. Our method employs expert features to replace the commonly used data transformations in previous...

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Hauptverfasser: Nonnenmacher, Manuel, Oldenburg, Lukas, Steinwart, Ingo, Reeb, David
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creator Nonnenmacher, Manuel
Oldenburg, Lukas
Steinwart, Ingo
Reeb, David
description Proceedings of the 39th International Conference on Machine Learning (ICML), PMLR 162:16969-16989, 2022 We present an approach that incorporates expert knowledge for time-series representation learning. Our method employs expert features to replace the commonly used data transformations in previous contrastive learning approaches. We do this since time-series data frequently stems from the industrial or medical field where expert features are often available from domain experts, while transformations are generally elusive for time-series data. We start by proposing two properties that useful time-series representations should fulfill and show that current representation learning approaches do not ensure these properties. We therefore devise ExpCLR, a novel contrastive learning approach built on an objective that utilizes expert features to encourage both properties for the learned representation. Finally, we demonstrate on three real-world time-series datasets that ExpCLR surpasses several state-of-the-art methods for both unsupervised and semi-supervised representation learning.
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title Utilizing Expert Features for Contrastive Learning of Time-Series Representations
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