CLOCS: contrastive learning of cardiac signals across space, time, and patients
The healthcare industry generates troves of unlabelled physiological data. This data can be exploited via contrastive learning, a self-supervised pre-training method that encourages representations of instances to be similar to one another. We propose a family of contrastive learning methods, CLOCS,...
Main Authors: | Kiyasseh, D, Zhu, T, Clifton, DA |
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Format: | Journal article |
Language: | English |
Published: |
Journal of Machine Learning Research
2021
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