Introducing Spectral Attention for Long-Range Dependency in Time Series Forecasting

Neural Information Processing Systems 

Spectral Attention preserves long-period trends through a low-pass filter and facilitates gradient to flow between samples. Spectral Attention can be seamlessly integrated into most sequence models, allowing models with fixed-sized look-back windows to capture long-range dependencies over thousands of steps.

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