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Modelling multivariate spatio-temporal data with identifiable variational autoencoders

Year of publication

2025

Authors

Sipilä, Mika; Cappello, Claudia; De Iaco, Sandra; Nordhausen, Klaus; Taskinen, Sara

Abstract

Modelling multivariate spatio-temporal data with complex dependency structures is a challenging task but can be simplified by assuming that the original variables are generated from independent latent components. If these components are found, they can be modelled univariately. Blind source separation aims to recover the latent components by estimating the unknown linear or nonlinear unmixing transformation based on the observed data only. In this paper, we extend recently introduced identifiable variational autoencoder to the nonlinear nonstationary spatio-temporal blind source separation setting and demonstrate its performance using comprehensive simulation studies. Additionally, we introduce two alternative methods for the latent dimension estimation, which is a crucial task in order to obtain the correct latent representation. Finally, we illustrate the proposed methods using a meteorological application, where we estimate the latent dimension and the latent components, interpret the components, and show how nonstationarity can be accounted and prediction accuracy can be improved by using the proposed nonlinear blind source separation method as a preprocessing method.
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Organizations and authors

University of Jyväskylä

Nordhausen Klaus Orcid -palvelun logo

Sipilä Mika Orcid -palvelun logo

Taskinen Sara Orcid -palvelun logo

Publication type

Publication format

Article

Parent publication type

Journal

Article type

Original article

Audience

Scientific

Peer-reviewed

Peer-Reviewed

MINEDU's publication type classification code

A1 Journal article (refereed), original research

Publication channel information

Journal/Series

Neural Networks

Publisher

Elsevier

Volume

181

Article number

106774

​Publication forum

63865

Open access

Open access in the publisher’s service

Yes

Open access of publication channel

Partially open publication channel

Self-archived

Yes

Other information

Fields of science

Mathematics; Statistics and probability

Keywords

[object Object],[object Object],[object Object]

Publication country

United States

Internationality of the publisher

International

Language

English

International co-publication

Yes

Co-publication with a company

No

DOI

10.1016/j.neunet.2024.106774

The publication is included in the Ministry of Education and Culture’s Publication data collection

Yes