CMoS: Rethinking Time Series Prediction Through the Lens of Chunk-wise Spatial Correlations
CMoS: Rethinking Time Series Prediction Through the Lens of Chunk-wise Spatial Correlations
Recent advances in lightweight time series forecasting models suggest the inherent simplicity of time series forecasting tasks. In this paper, we present CMoS, a super-lightweight time series forecasting model. Instead of learning the embedding of the shapes, CMoS directly models the spatial correlations between different time series chunks. Additionally, we introduce a Correlation Mixing technique that enables the model to capture diverse spatial correlations with minimal parameters, and an optional Periodicity Injection technique to ensure faster convergence. Despite utilizing as low as 1% of the lightweight model DLinear's parameters count, experimental results demonstrate that CMoS outperforms existing state-of-the-art models across multiple datasets. Furthermore, the learned weights of CMoS exhibit great interpretability, providing practitioners with valuable insights into temporal structures within specific application scenarios.
Haotian Si、Changhua Pei、Jianhui Li、Dan Pei、Gaogang Xie
计算技术、计算机技术
Haotian Si,Changhua Pei,Jianhui Li,Dan Pei,Gaogang Xie.CMoS: Rethinking Time Series Prediction Through the Lens of Chunk-wise Spatial Correlations[EB/OL].(2025-05-25)[2025-06-30].https://arxiv.org/abs/2505.19090.点此复制
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