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dc.contributor.authorWickstrøm, Kristoffer
dc.contributor.authorKampffmeyer, Michael
dc.contributor.authorMikalsen, Karl Øyvind
dc.contributor.authorJenssen, Robert
dc.date.accessioned2022-08-25T11:31:33Z
dc.date.available2022-08-25T11:31:33Z
dc.date.issued2022-02-14
dc.description.abstractThe lack of labeled data is a key challenge for learning useful representation from time series data. However, an unsupervised representation framework that is capable of producing high quality representations could be of great value. It is key to enabling transfer learning, which is especially beneficial for medical applications, where there is an abundance of data but labeling is costly and time consuming. We propose an unsupervised contrastive learning framework that is motivated from the perspective of label smoothing. The proposed approach uses a novel contrastive loss that naturally exploits a data augmentation scheme in which new samples are generated by mixing two data samples with a mixing component. The task in the proposed framework is to predict the mixing component, which is utilized as soft targets in the loss function. Experiments demonstrate the framework’s superior performance compared to other representation learning approaches on both univariate and multivariate time series and illustrate its benefits for transfer learning for clinical time series.en_US
dc.identifier.citationWickstrøm, Kampffmeyer, Mikalsen, Jenssen. Mixing up contrastive learning: Self-supervised representation learning for time series. Pattern Recognition Letters. 2022;155:54-61en_US
dc.identifier.cristinIDFRIDAID 2020938
dc.identifier.doi10.1016/j.patrec.2022.02.007
dc.identifier.issn0167-8655
dc.identifier.issn1872-7344
dc.identifier.urihttps://hdl.handle.net/10037/26414
dc.language.isoengen_US
dc.publisherElsevieren_US
dc.relation.journalPattern Recognition Letters
dc.rights.accessRightsopenAccessen_US
dc.rights.holderCopyright 2022 The Author(s)en_US
dc.titleMixing up contrastive learning: Self-supervised representation learning for time seriesen_US
dc.type.versionpublishedVersionen_US
dc.typeJournal articleen_US
dc.typeTidsskriftartikkelen_US
dc.typePeer revieweden_US


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