Locally Linear Continual Learning for Time Series based on VC-Theoretical Generalization Bounds
arXiv cs.LG / 3/17/2026
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Key Points
- It presents SyMPLER, an explainable time-series forecasting model that uses dynamic piecewise-linear approximations to handle nonstationary environments.
- Unlike other locally linear models, SyMPLER uses VC-theory generalization bounds to automatically determine when to add new local models based on prediction errors, removing the need for explicit data clustering.
- Experiments show SyMPLER achieves comparable performance to both black-box and existing explainable models while maintaining a transparent, human-interpretable structure that reveals the system's behavior.
- The work emphasizes balancing forecasting accuracy with interpretability in nonstationary settings, offering an adaptive and transparent solution for time-series forecasting.
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