SINDy-KANs: Sparse identification of non-linear dynamics through Kolmogorov-Arnold networks
arXiv cs.LG / 3/20/2026
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Key Points
- SINDy-KANs introduce a method that jointly trains Kolmogorov-Arnold networks (KANs) with a SINDy-like sparse representation to improve the interpretability of learned dynamical models.
- The approach applies sparsity at the level of each activation function, preserving the expressive power of deep KANs while promoting parsimonious equations.
- By combining sparse equation discovery with neural network structures, the method aims to yield interpretable models of nonlinear dynamics without sacrificing deep learning capabilities.
- The authors validate the method on symbolic regression tasks, including dynamical systems, demonstrating accurate equation discovery across multiple systems.
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