Effective Dynamics and Transition Pathways from Koopman-Inspired Neural Learning of Collective Variables
arXiv stat.ML / 4/8/2026
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Key Points
- The ISOKANN framework uses Koopman-operator theory combined with neural networks to learn collective variables (CVs) and effective reduced dynamics from complex molecular simulation data.
- It integrates Koopman-based invariant subspace identification with Krylov-like subspace algorithms to derive latent-space dynamics that can describe metastable transitions.
- The learned reduced model is connected to transition-specific quantities such as transition rates and times, committor functions, and transition pathways.
- Numerical experiments on benchmark potentials show ISOKANN can reconstruct coarse-grained kinetics and reproduce transition times across both enthalpic and entropic barriers.
- Overall, the paper presents a principled, data-driven pipeline for computing metastable transition rates and pathways directly from high-dimensional simulation trajectories using learned CVs.
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