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Learning finite symmetry groups of dynamical systems via equivariance detection

4 March 2025
Pablo Calvo-Barlés
Sergio G. Rodrigo
Luis Martín-Moreno
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Abstract

In this work, we introduce the Equivariance Seeker Model (ESM), a data-driven method for discovering the underlying finite equivariant symmetry group of an arbitrary function. ESM achieves this by optimizing a loss function that balances equivariance preservation with the penalization of redundant solutions, ensuring the complete and accurate identification of all symmetry transformations. We apply this framework specifically to dynamical systems, identifying their symmetry groups directly from observed trajectory data. To demonstrate its versatility, we test ESM on multiple systems in two distinct scenarios: (i) when the governing equations are known theoretically and (ii) when they are unknown, and the equivariance finding relies solely on observed data. The latter case highlights ESM's fully data-driven capability, as it requires no prior knowledge of the system's equations to operate.

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@article{calvo-barlés2025_2503.03014,
  title={ Learning finite symmetry groups of dynamical systems via equivariance detection },
  author={ Pablo Calvo-Barlés and Sergio G. Rodrigo and Luis Martín-Moreno },
  journal={arXiv preprint arXiv:2503.03014},
  year={ 2025 }
}
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