TimeAPN: Adaptive Amplitude-Phase Non-Stationarity Normalization for Time Series Forecasting
arXiv cs.LG / 3/19/2026
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Key Points
- TimeAPN introduces Adaptive Amplitude-Phase Non-Stationarity Normalization to address non-stationarity in multivariate long-term time series forecasting by explicitly modeling non-stationary factors in both time and frequency domains.
- The framework first models the mean sequence jointly in time and frequency domains and forecasts its evolution over future horizons.
- It extracts phase information in the frequency domain and explicitly models the phase discrepancy between predicted and ground-truth sequences to capture temporal misalignment.
- Amplitude information is used in an adaptive normalization mechanism, enabling the model to account for abrupt energy fluctuations and to integrate predicted factors with backbone forecasts through a collaborative de-normalization step.
- The approach is model-agnostic and yields consistent improvements across seven real-world datasets, outperforming state-of-the-art reversible normalization methods.
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