Please use this identifier to cite or link to this item: http://hdl.handle.net/10397/108075
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Title: Revitalizing multivariate time series forecasting : learnable decomposition with inter-series dependencies and intra-series variations modeling
Authors: Yu, G 
Zou, J 
Hu, X
Aviles-Rivero, AI
Qin, J 
Wang, S 
Issue Date: 2024
Source: Proceedings of the 41 st International Conference on Machine Learning, Vienna, Austria. PMLR 235, 2024
Abstract: Predicting multivariate time series is crucial, demanding precise modeling of intricate patterns, including inter-series dependencies and intra-series variations. Distinctive trend characteristics in each time series pose challenges, and existing methods, relying on basic moving average kernels, may struggle with the non-linear structure and complex trends in real-world data. Given that, we introduce a learnable decomposition strategy to capture dynamic trend information more reasonably. Additionally, we propose a dual attention module tailored to capture inter-series dependencies and intra-series variations simultaneously for better time series forecasting, which is implemented by channel-wise self-attention and autoregressive self-attention. To evaluate the effectiveness of our method, we conducted experiments across eight open-source datasets and compared it with the state-of-the-art methods. Through the comparison results, our Leddam (LEarnable Decomposition and Dual Attention Module) not only demonstrates significant advancements in predictive performance but also the proposed decomposition strategy can be plugged into other methods with a large performance-boosting, from 11.87% to 48.56% MSE error degradation. Code is available at this link: https://github.com/LeviAckman/Leddam.
Description: Forty-first International Conference on Machine Learning, ICML 2024, Vienna, Austria, 21-27 Jul 2024
Rights: Posted with permission of the author.
Appears in Collections:Conference Paper

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