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Time series data, including univariate and multivariate ones, are characterized by unique composition and complex multi-scale temporal variations. They often require special consideration of decomposition and multi-scale modeling to analyze. Existing deep learning methods on this best fit to univariate time series only, and have not sufficiently considered sub-series modeling and decomposition completeness. To address these challenges, we propose MSD-Mixer, a M ulti- S cale D ecomposition MLP- Mixer , which learns to explicitly decompose and represent the input time series in its different layers. To handle the multi-scale temporal patterns and multivariate dependencies, we propose a novel temporal patching approach to model the time series as multi-scale patches, and employ MLPs to capture intra- and inter-patch variations and channel-wise correlations. In addition, we propose a novel loss function to constrain both the mean and the autocorrelation of the decomposition residual for better decomposition completeness. Through extensive experiments on various real-world datasets for five common time series analysis tasks, we demonstrate that MSD-Mixer consistently and significantly outperforms other state-of-the-art algorithms with better efficiency.
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Shuhan Zhong
Sizhe Song
Weipeng Zhuo
Proceedings of the VLDB Endowment
University of Hong Kong
Hong Kong University of Science and Technology
Beijing Normal University - Hong Kong Baptist University United International College
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Zhong et al. (Fri,) studied this question.
www.synapsesocial.com/papers/68e7604eb6db6435876d7677 — DOI: https://doi.org/10.14778/3654621.3654637