Effective Dynamics and Transition Pathways from Koopman-Inspired Neural Learning of Collective Variables

arXiv stat.ML / 4/8/2026

💬 OpinionIdeas & Deep AnalysisModels & Research

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.

Abstract

The ISOKANN (Invariant Subspaces of Koopman Operators Learned by Artificial Neural Networks) framework provides a data-driven route to extract collective variables (CVs) and effective dynamics from complex molecular systems. In this work, we integrate the theoretical foundation of Koopman operators with Krylov-like subspace algorithms, and reduced dynamical modeling to build a coherent picture of how to describe metastable transitions in high-dimensional systems based on CVs. Starting from the identification of CVs based on dominant invariant subspaces, we derive the corresponding effective dynamics on the latent space and connect these to transition rates and times, committor functions, and transition pathways. The combination of Koopman-based learning and reduced-dimensional effective dynamics yields a principled framework for computing transition rates and pathways from simulation data. Numerical experiments on one-, two-, and three-dimensional benchmark potentials illustrate the ability of ISOKANN to reconstruct the coarse-grained kinetics and reproduce transition times across enthalpic and entropic barriers.