Latent mixed-effect models for high-dimensional longitudinal data

dc.contributorAalto-yliopistofi
dc.contributorAalto Universityen
dc.contributor.authorOng, Priscilla
dc.contributor.authorHaußmann, Manuel
dc.contributor.authorLönnroth, Otto
dc.contributor.authorLähdesmäki, Harri
dc.contributor.departmentDepartment of Computer Scienceen
dc.contributor.groupauthorProfessorship Lähdesmäki Harrien
dc.contributor.groupauthorComputer Science Professorsen
dc.contributor.groupauthorComputer Science - Computational Life Sciences (CSLife) - Research areaen
dc.contributor.groupauthorComputer Science - Artificial Intelligence and Machine Learning (AIML) - Research areaen
dc.contributor.groupauthorHelsinki Institute for Information Technology (HIIT)en
dc.contributor.organizationDepartment of Computer Science
dc.contributor.organizationUniversity of Southern Denmark
dc.date.accessioned2025-06-19T08:51:03Z
dc.date.available2025-06-19T08:51:03Z
dc.date.issued2025-05-24
dc.descriptionPublisher Copyright: © 2025, Transactions on Machine Learning Research. All rights reserved.
dc.description.abstractModelling longitudinal data is an important yet challenging task. These datasets can be high-dimensional, contain non-linear effects and feature time-varying covariates. Gaussian process (GP) prior-based variational autoencoders (VAEs) have emerged as a promising approach due to their ability to model time-series data. However, they are costly to train and struggle to fully exploit the rich covariates characteristic of longitudinal data, making them difficult for practitioners to use effectively. In this work, we leverage linear mixed models (LMMs) and amortized variational inference to provide conditional priors for VAEs, and propose LMM-VAE, a scalable, interpretable and identifiable model. We highlight theoretical connections between it and GP-based techniques, providing a unified framework for this class of methods. Our proposal performs competitively compared to existing approaches across simulated and real-world datasets.en
dc.description.versionPeer revieweden
dc.format.extent30
dc.format.mimetypeapplication/pdf
dc.identifier.citationOng, P, Haußmann, M, Lönnroth, O & Lähdesmäki, H 2025, 'Latent mixed-effect models for high-dimensional longitudinal data', Transactions on Machine Learning Research, vol. 2025, no. May. < https://openreview.net/forum?id=7A96yteeF9 >en
dc.identifier.issn2835-8856
dc.identifier.otherPURE UUID: f541dc74-dbfb-4aeb-8081-07c19fb5aacd
dc.identifier.otherPURE ITEMURL: https://research.aalto.fi/en/publications/f541dc74-dbfb-4aeb-8081-07c19fb5aacd
dc.identifier.otherPURE LINK: https://openreview.net/forum?id=7A96yteeF9
dc.identifier.otherPURE FILEURL: https://research.aalto.fi/files/183700163/Latent_mixed-effect_models_for_high-dimensional_longitudinal_data.pdf
dc.identifier.urihttps://aaltodoc.aalto.fi/handle/123456789/136861
dc.identifier.urnURN:NBN:fi:aalto-202506195107
dc.language.isoenen
dc.publisherTransactions on Machine Learning Research
dc.relation.ispartofseriesTransactions on Machine Learning Researchen
dc.relation.ispartofseriesVolume 2025, issue Mayen
dc.rightsopenAccessen
dc.rightsCC BY
dc.rights.urihttps://creativecommons.org/licenses/by/4.0/
dc.titleLatent mixed-effect models for high-dimensional longitudinal dataen
dc.typeA1 Alkuperäisartikkeli tieteellisessä aikakauslehdessäfi
dc.type.versionpublishedVersion

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