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CASA: CNN Autoencoder-based Score Attention for Efficient Multivariate Long-term Time-series Forecasting

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Multivariate long-term time series forecasting is critical for applications such as weather prediction, and traffic analysis. In addition, the implementation of Transformer variants has improved prediction accuracy. Following these variants, different input data process approaches also enhanced the field, such as tokenization techniques including point-wise, channel-wise, and patch-wise tokenization. However, previous studies still have limitations in time complexity, computational resources, and cross-dimensional interactions. To address these limitations, we introduce a novel CNN Autoencoder-based Score Attention mechanism (CASA), which can be introduced in diverse Transformers model-agnosticically by reducing memory and leading to improvement in model performance. Experiments on eight real-world datasets validate that CASA decreases computational resources by up to 77.7%, accelerates inference by 44.0%, and achieves state-of-the-art performance, ranking first in 87.5% of evaluated metrics.

Minhyuk Lee, HyeKyung Yoon, MyungJoo Kang• 2025

Related benchmarks

TaskDatasetResultRank
Fluid Dynamics PredictionLow-Re (test)
MAE0.0185
20
Fluid Dynamics PredictionDam (test)
MAE0.0209
20
Fluid Dynamics PredictionHigh-Re (test)
MAE0.0543
20
Fluid Dynamics PredictionChannel (test)
MAE0.0486
20
Fluid Dynamics PredictionCavity (test)
MAE0.0265
20
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