LLM-ODE: Data-driven Discovery of Dynamical Systems with Large Language Models
arXiv cs.LG / 3/24/2026
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Key Points
- LLM-ODE is presented as a new LLM-aided framework for discovering governing equations of dynamical systems from data, aiming to accelerate automated scientific discovery.
- The method addresses limitations of traditional genetic programming (GP) by using an LLM generative prior to guide symbolic evolution with patterns extracted from elite candidate equations.
- Experiments reported across 91 dynamical systems indicate that LLM-ODE variants improve search efficiency and Pareto-front quality versus classical GP, suggesting more effective exploration of the symbolic space.
- The framework is claimed to scale better to higher-dimensional systems than linear and Transformer-only model discovery approaches while maintaining the interpretability benefits of GP-style symbolic search.
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