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arxiv: 2602.10637 · v2 · pith:ZQTWU643new · submitted 2026-02-11 · 💻 cs.LG · cond-mat.stat-mech· physics.chem-ph· stat.ML

Coarse-Grained Boltzmann Generators

classification 💻 cs.LG cond-mat.stat-mechphysics.chem-phstat.ML
keywords samplingboltzmanncoarse-grainedcg-bgsgeneratorsequilibriumforcegenerative
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Sampling equilibrium molecular configurations from the Boltzmann distribution is a longstanding challenge. Boltzmann Generators (BGs) address this by combining exact-likelihood generative models with importance sampling, but practical scalability is limited. Meanwhile, coarse-grained surrogates enable the modeling of larger systems by reducing effective dimensionality, yet often lack a reweighting procedure required to ensure asymptotically correct statistics. In this work, we propose Coarse-Grained Boltzmann Generators (CG-BGs), a framework for reduced-order generative modeling with importance sampling in coarse-grained coordinate space. CG-BGs generate samples using a flow-based model and reweight them using a learned potential of mean force (PMF). We show that the PMF can be learned from rapidly converged trajectories via enhanced sampling force matching. Experiments demonstrate that CG-BGs capture solvent-mediated interactions in highly reduced representations while substantially reducing computational cost relative to atomistic BGs, providing a practical route toward equilibrium sampling of larger molecular systems.

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