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arXiv 提交日期: 2026-03-15
📄 Abstract - Sampling Boltzmann distributions via normalizing flow approximation of transport maps

In a celebrated paper \cite{noe2019boltzmann}, Noé, Olsson, Köhler and Wu introduced an efficient method for sampling high-dimensional Boltzmann distributions arising in molecular dynamics via normalizing flow approximation of transport maps. Here, we place this approach on a firm mathematical foundation. We prove the existence of a normalizing flow between the reference measure and the true Boltzmann distribution up to an arbitrarily small error in the Wasserstein distance. This result covers general Boltzmann distributions from molecular dynamics, which have low regularity due to the presence of interatomic Coulomb and Lennard-Jones interactions. The proof is based on a rigorous construction of the Moser transport map for low-regularity endpoint densities and approximation theorems for neural networks in Sobolev spaces. Numerical simulations for a simple model system and for the alanine dipeptide molecule confirm that the true and generated distributions are close in the Wasserstein distance. Moreover we observe that the RealNVP architecture does not just successfully capture the equilibrium Boltzmann distribution but also the metastable dynamics.

顶级标签: machine learning theory model training
详细标签: normalizing flows boltzmann sampling molecular dynamics transport maps wasserstein distance 或 搜索:

通过归一化流逼近传输映射来采样玻尔兹曼分布 / Sampling Boltzmann distributions via normalizing flow approximation of transport maps


1️⃣ 一句话总结

这篇论文从数学上证明了,可以使用一种名为‘归一化流’的神经网络模型,来高效且高精度地模拟和采样分子动力学中复杂的高维玻尔兹曼分布,并通过简单模型和丙氨酸二肽分子的实验验证了其有效性。

源自 arXiv: 2603.14258