Predicting Dynamics of Ultra-Large Complex Systems by Inferring Governing Equations
arXiv cs.LG / 4/2/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper proposes Sparse Identification Graph Neural Network (SIGN) to infer governing equations of ultra-large complex systems from data, aiming to bridge the gap between interpretable equation discovery and scalable neural methods.
- SIGN reformulates symbolic discovery at the edge level so that sparse identification can scale with network size, enabling equation discovery for graphs with over 100,000 nodes.
- Experiments across multiple benchmarks (e.g., coupled chaotic oscillators, neural dynamics, and epidemic spreading) show high-precision recovery of governing equations and stable long-term forecasting.
- Applied to sea surface temperature time series (71,987 positions), SIGN produces a compact predictive network model and forecasts large-scale conditions up to two years ahead.
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