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Characterizing Nonlinear Dynamics via Smooth Prototype Equivalences

13 March 2025
Roy Friedman
Noa Moriel
Matthew Ricci
Guy Pelc
Yair Weiss
Mor Nitzan
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Abstract

Characterizing dynamical systems given limited measurements is a common challenge throughout the physical and biological sciences. However, this task is challenging, especially due to transient variability in systems with equivalent long-term dynamics. We address this by introducing smooth prototype equivalences (SPE), a framework that fits a diffeomorphism using normalizing flows to distinct prototypes - simplified dynamical systems that define equivalence classes of behavior. SPE enables classification by comparing the deformation loss of the observed sparse, high-dimensional measurements to the prototype dynamics. Furthermore, our approach enables estimation of the invariant sets of the observed dynamics through the learned mapping from prototype space to data space. Our method outperforms existing techniques in the classification of oscillatory systems and can efficiently identify invariant structures like limit cycles and fixed points in an equation-free manner, even when only a small, noisy subset of the phase space is observed. Finally, we show how our method can be used for the detection of biological processes like the cell cycle trajectory from high-dimensional single-cell gene expression data.

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@article{friedman2025_2503.10336,
  title={ Characterizing Nonlinear Dynamics via Smooth Prototype Equivalences },
  author={ Roy Friedman and Noa Moriel and Matthew Ricci and Guy Pelc and Yair Weiss and Mor Nitzan },
  journal={arXiv preprint arXiv:2503.10336},
  year={ 2025 }
}
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