Uncertainty-Aware Sparse Identification of Dynamical Systems via Bayesian Model Averaging
arXiv stat.ML / 4/14/2026
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Key Points
- The paper addresses data-driven identification of dynamical systems when the true governing equations are unknown and must be selected from many candidate basis functions and interactions.
- It proposes a Bayesian sparse identification framework that infers both interaction structure and functional form while providing principled uncertainty quantification via Bayesian model averaging.
- The approach outputs posterior inclusion probabilities for candidate interactions/components, helping measure which terms are credibly supported by limited or poorly identifiable data.
- Numerical experiments on oscillator networks show the method can recover sparse interaction structures and also capture higher-order harmonics, phase-lag effects, and multi-body interactions with quantified uncertainty.
- The method is shown to work even when the true dynamics are not exactly in the assumed model class, enabling discovery of effective components with uncertainty estimates.


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