Dynamic Long-Term Time-Series Forecasting via Meta Transformer Networks

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Dynamic Long-Term Time-Series Forecasting via Meta Transformer Networks
Title:
Dynamic Long-Term Time-Series Forecasting via Meta Transformer Networks
Journal Title:
IEEE Transactions on Artificial Intelligence
Keywords:
Publication Date:
19 February 2024
Citation:
Ma’sum, M. A., Sarkar, M. R., Pratama, M., Ramasamy, S., Anavatti, S., Liu, L., Habibullah, H., & Kowalczyk, R. (2024). Dynamic Long-Term Time-Series Forecasting via Meta Transformer Networks. IEEE Transactions on Artificial Intelligence, 5(8), 4258–4268. https://doi.org/10.1109/tai.2024.3365775
Abstract:
A reliable long-term time-series forecaster is highly demanded in practice but comes across many challenges such as low computational and memory footprints as well as robustness against dynamic learning environments. This article proposes meta-transformer networks (MANTRA) to deal with the dynamic long-term time-series forecasting tasks. MANTRA relies on the concept of fast and slow learners where a collection of fast learners learns different aspects of data distributions while adapting quickly to changes. A slow learner tailors suitable representations to fast learners. Fast adaptations to dynamic environments are achieved using the universal representation transformer (URT) layers producing task-adapted representations with a small number of parameters. Our experiments using four datasets with different prediction lengths demonstrate the advantage of our approach with at least 3% improvements over the baseline algorithms for both multivariate and univariate settings.
License type:
Publisher Copyright
Funding Info:
There was no specific funding for the research done
Description:
© 2024 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.
ISSN:
2691-4581
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