AC-SINDy: Compositional Sparse Identification of Nonlinear Dynamics

arXiv cs.LG / 4/22/2026

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Key Points

  • The AC-SINDy method extends the Sparse Identification of Nonlinear Dynamics (SINDy) by replacing explicit candidate feature libraries with nonlinear features built via arithmetic-circuit-style compositions.
  • It constructs features using compositions of linear functions and multiplicative interactions, producing a more compact, scalable parameterization that allows sparsity to be enforced directly on the computational graph.
  • The paper introduces a framework that decouples state estimation from dynamics identification by using latent state inference along with shared dynamics and multi-step supervision.
  • Experiments on nonlinear and chaotic systems show AC-SINDy can recover accurate, interpretable governing equations while scaling better than standard SINDy, and remains more robust to noise.
  • Overall, the work aims to improve both interpretability and computational efficiency in sparse discovery of governing equations for complex dynamical systems.

Abstract

We present AC-SINDy, a compositional extension of the Sparse Identification of Nonlinear Dynamics (SINDy) framework that replaces explicit feature libraries with a structured representation based on arithmetic circuits. Rather than enumerating candidate basis functions, the proposed approach constructs nonlinear features through compositions of linear functions and multiplicative interactions, yielding a compact and scalable parameterization and enabling sparsity to be enforced directly over the computational graph. We also introduce a formulation that separates state estimation from dynamics identification by combining latent state inference with shared dynamics and multi-step supervision, improving robustness to noise while preserving interpretability. Experiments on nonlinear and chaotic systems demonstrate that the method recovers accurate and interpretable governing equations while scaling more favorably than standard SINDy.