Spatiotemporal Attention for Multivariate Time Series Prediction and Interpretation

dc.contributor.author Gangopadhyay, Tryambak
dc.contributor.author Tan, Sin Yong
dc.contributor.author Jiang, Zhanhong
dc.contributor.author Meng, Rui
dc.contributor.author Sarkar, Soumik
dc.contributor.department Department of Mechanical Engineering
dc.date.accessioned 2025-02-26T17:48:04Z
dc.date.available 2025-02-26T17:48:04Z
dc.date.issued 2020-10-26
dc.description.abstract Multivariate time series modeling and prediction problems are abundant in many machine learning application domains. Accurate interpretation of such prediction outcomes from a machine learning model that explicitly captures temporal correlations can significantly benefit the domain experts. In this context, temporal attention has been successfully applied to isolate the important time steps for the input time series. However, in multivariate time series problems, spatial interpretation is also critical to understand the contributions of different variables on the model outputs. We propose a novel deep learning architecture, called spatiotemporal attention mechanism (STAM) for simultaneous learning of the most important time steps and variables. STAM is a causal (i.e., only depends on past inputs and does not use future inputs) and scalable (i.e., scales well with an increase in the number of variables) approach that is comparable to the state-of-the-art models in terms of computational tractability. We demonstrate our models' performance on two popular public datasets and a domain-specific dataset. When compared with the baseline models, the results show that STAM maintains state-of-the-art prediction accuracy while offering the benefit of accurate spatiotemporal interpretability. The learned attention weights are validated from a domain knowledge perspective for these real-world datasets.
dc.description.comments This is a preprint from Gangopadhyay, Tryambak, Sin Yong Tan, Zhanhong Jiang, Rui Meng, and Soumik Sarkar. "Spatiotemporal Attention for Multivariate Time Series Prediction and Interpretation." arXiv preprint arXiv:2008.04882 (2020). doi: https://doi.org/10.48550/arXiv.2008.04882. </p> Published as Gangopadhyay, Tryambak, Sin Yong Tan, Zhanhong Jiang, Rui Meng, and Soumik Sarkar. "Spatiotemporal attention for multivariate time series prediction and interpretation." In ICASSP 2021-2021 IEEE international conference on acoustics, speech and signal processing (ICASSP), pp. 3560-3564. IEEE, 2021. doi: https://doi.org/10.1109/ICASSP39728.2021.9413914.
dc.identifier.uri https://dr.lib.iastate.edu/handle/20.500.12876/7rKo7Bar
dc.language.iso en
dc.source.uri https://doi.org/10.48550/arXiv.2008.04882 *
dc.subject.disciplines DegreeDisciplines::Engineering::Mechanical Engineering
dc.subject.disciplines DegreeDisciplines::Physical Sciences and Mathematics::Statistics and Probability::Longitudinal Data Analysis and Time Series
dc.title Spatiotemporal Attention for Multivariate Time Series Prediction and Interpretation
dc.type Preprint
dspace.entity.type Publication
relation.isAuthorOfPublication 0799a94f-9cb1-4d7c-8b25-90f989dd2994
relation.isOrgUnitOfPublication 6d38ab0f-8cc2-4ad3-90b1-67a60c5a6f59
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