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A Multi-scale Representation Learning Framework for Long-Term Time Series Forecasting

A Multi-scale Representation Learning Framework for Long-Term Time Series Forecasting

来源:Arxiv_logoArxiv
英文摘要

Long-term time series forecasting (LTSF) offers broad utility in practical settings like energy consumption and weather prediction. Accurately predicting long-term changes, however, is demanding due to the intricate temporal patterns and inherent multi-scale variations within time series. This work confronts key issues in LTSF, including the suboptimal use of multi-granularity information, the neglect of channel-specific attributes, and the unique nature of trend and seasonal components, by introducing a proficient MLP-based forecasting framework. Our method adeptly disentangles complex temporal dynamics using clear, concurrent predictions across various scales. These multi-scale forecasts are then skillfully integrated through a system that dynamically assigns importance to information from different granularities, sensitive to individual channel characteristics. To manage the specific features of temporal patterns, a two-pronged structure is utilized to model trend and seasonal elements independently. Experimental results on eight LTSF benchmarks demonstrate that MDMixer improves average MAE performance by 4.64% compared to the recent state-of-the-art MLP-based method (TimeMixer), while achieving an effective balance between training efficiency and model interpretability.

Qingjian Ni、Fanbo Ju、Yu Chen、Ziqi Zhao、Boshi Gao

大气科学(气象学)能源动力工业经济计算技术、计算机技术

Qingjian Ni,Fanbo Ju,Yu Chen,Ziqi Zhao,Boshi Gao.A Multi-scale Representation Learning Framework for Long-Term Time Series Forecasting[EB/OL].(2025-05-12)[2025-06-12].https://arxiv.org/abs/2505.08199.点此复制

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