AI RESEARCH
Geometric Dictionary Learning of Dynamical Systems with Optimal Transport
arXiv CS.LG
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ArXi:2605.18276v1 Announce Type: cross Learning dynamical systems through operator-theoretic representations provides a powerful framework for analyzing complex dynamics, as spectral quantities such as eigenvalues and invariant structures encode characteristic time scales and long-term behavior. However, dynamical operators are typically estimated independently for each system, preventing the discovery of shared structure across related dynamics. To address this limitation, we posit that related dynamical systems lie near a low-dimensional manifold in spectral operator space.