Signals, Concepts, and Laws: Toward Universal, Explainable Time-Series Forecasting
- AI4TS
Main:13 Pages
7 Figures
Bibliography:5 Pages
12 Tables
Appendix:13 Pages
Abstract
Accurate, explainable and physically credible forecasting remains a persistent challenge for multivariate time-series whose statistical properties vary across domains. We propose DORIC, a Domain-Universal, ODE-Regularized, Interpretable-Concept Transformer for Time-Series Forecasting that generates predictions through five self-supervised, domain-agnostic concepts while enforcing differentiable residuals grounded in first-principles constraints.
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