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dc.contributor.authorYu, Dahai
dc.contributor.authorZhuang, Dingyi
dc.contributor.authorJiang, Lin
dc.contributor.authorXu, Rongchao
dc.contributor.authorYe, Xinyue
dc.contributor.authorBu, Yuheng
dc.contributor.authorWang, Shenhao
dc.contributor.authorWang, Guang
dc.date.accessioned2026-01-13T19:16:37Z
dc.date.available2026-01-13T19:16:37Z
dc.date.issued2025-12-12
dc.identifier.isbn979-8-4007-2086-4
dc.identifier.urihttps://hdl.handle.net/1721.1/164524
dc.descriptionSIGSPATIAL ’25, Minneapolis, MN, USAen_US
dc.description.abstractSpatiotemporal prediction plays a critical role in numerous real-world applications such as urban planning, transportation optimization, disaster response, and pandemic control. In recent years, researchers have made significant progress by developing advanced deep learning models for spatiotemporal prediction. However, most existing models are deterministic, i.e., predicting only the expected mean values without quantifying uncertainty, leading to potentially unreliable and inaccurate outcomes. While recent studies have introduced probabilistic models to quantify uncertainty, they typically focus on a single phenomenon (e.g., taxi, bike, crime, or traffic crashes), thereby neglecting the inherent correlations among heterogeneous urban phenomena. To address the research gap, we propose a novel Graph Neural Network with Uncertainty Quantification, termed UQGNN for multivariate spatiotemporal prediction. UQGNN introduces two key innovations: (i) an Interaction-aware Spatiotemporal Embedding Module that integrates a multivariate diffusion graph convolutional network and an interaction-aware temporal convolutional network to effectively capture complex spatial and temporal interaction patterns, and (ii) a multivariate probabilistic prediction module designed to estimate both expected mean values and associated uncertainties. Extensive experiments on four real-world multivariate spatiotemporal datasets from Shenzhen, New York City, and Chicago demonstrate that UQGNN consistently outperforms state-of-the-art baselines in both prediction accuracy and uncertainty quantification. For example, on the Shenzhen dataset, UQGNN achieves a 5% improvement in both prediction accuracy and uncertainty quantification.en_US
dc.publisherACM|The 33rd ACM International Conference on Advances in Geographic Information Systemsen_US
dc.relation.isversionofhttps://doi.org/10.1145/3748636.3762709en_US
dc.rightsArticle is made available in accordance with the publisher's policy and may be subject to US copyright law. Please refer to the publisher's site for terms of use.en_US
dc.sourceAssociation for Computing Machineryen_US
dc.titleUQGNN: Uncertainty Quantification of Graph Neural Networks for Multivariate Spatiotemporal Predictionen_US
dc.typeArticleen_US
dc.identifier.citationDahai Yu, Dingyi Zhuang, Lin Jiang, Rongchao Xu, Xinyue Ye, Yuheng Bu, Shenhao Wang, and Guang Wang. 2025. UQGNN: Uncertainty Quantification of Graph Neural Networks for Multivariate Spatiotemporal Prediction. In Proceedings of the 33rd ACM International Conference on Advances in Geographic Information Systems (SIGSPATIAL '25). Association for Computing Machinery, New York, NY, USA, 52–65.en_US
dc.contributor.departmentMassachusetts Institute of Technology. Department of Civil and Environmental Engineeringen_US
dc.identifier.mitlicensePUBLISHER_POLICY
dc.eprint.versionFinal published versionen_US
dc.type.urihttp://purl.org/eprint/type/ConferencePaperen_US
eprint.statushttp://purl.org/eprint/status/NonPeerRevieweden_US
dc.date.updated2026-01-01T08:49:02Z
dc.language.rfc3066en
dc.rights.holderThe author(s)
dspace.date.submission2026-01-01T08:49:03Z
mit.licensePUBLISHER_POLICY
mit.metadata.statusAuthority Work and Publication Information Neededen_US


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