MLOW: Interpretable Low-Rank Frequency Magnitude Decomposition of Multiple Effects for Time Series Forecasting
arXiv cs.LG / 3/20/2026
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Key Points
- MLOW represents a time series as a magnitude spectrum multiplied by phase-aware basis functions to enable interpretable decomposition of multiple effects.
- It introduces Hyperplane-NMF to learn a low-rank magnitude spectrum, capturing dominant trending and seasonal components.
- The method addresses spectral leakage with a flexible mechanism to select input horizons and frequency levels.
- Visual analyses show interpretable, hierarchical decomposition and demonstrate plug-and-play compatibility with existing TSF backbones, yielding performance improvements with minimal architectural changes.
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