BEnDEM:基于引导去噪能量匹配的波尔兹曼采样器

RuiKang OuYang, Bo Qiang, José Miguel Hernández-Lobato
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引用次数: 0

摘要

开发一种能够从波尔兹曼分布生成独立且相同分布(IID)样本的高效采样器是科学研究(如分子动力学)中的一项重要挑战。在这项工作中,我们打算学习给定能量函数的神经采样器,而不是从玻尔兹曼分布中采样的数据。通过学习噪声数据的能量,我们提出了一种基于扩散的采样器--基于能量的去噪能量匹配(ENERGY-BASED DENOISING ENERGYMATCHING),与相关研究相比,它在理论上具有更低的方差和更高的复杂度。此外,EnDEM 还采用了一种新颖的引导技术来平衡偏差和方差。我们评估了 EnDEM 和 BEnDEM 在二维 40 高斯混合模型(GMM)和四粒子双阱势能(DW-4)上的应用。实验结果表明,BEnDEM 可以达到最先进的性能,同时更加稳健。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BEnDEM:A Boltzmann Sampler Based on Bootstrapped Denoising Energy Matching
Developing an efficient sampler capable of generating independent and identically distributed (IID) samples from a Boltzmann distribution is a crucial challenge in scientific research, e.g. molecular dynamics. In this work, we intend to learn neural samplers given energy functions instead of data sampled from the Boltzmann distribution. By learning the energies of the noised data, we propose a diffusion-based sampler, ENERGY-BASED DENOISING ENERGY MATCHING, which theoretically has lower variance and more complexity compared to related works. Furthermore, a novel bootstrapping technique is applied to EnDEM to balance between bias and variance. We evaluate EnDEM and BEnDEM on a 2-dimensional 40 Gaussian Mixture Model (GMM) and a 4-particle double-welling potential (DW-4). The experimental results demonstrate that BEnDEM can achieve state-of-the-art performance while being more robust.
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