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Reweighted autoencoded variational Bayes for enhanced sampling (RAVE)

机译:重新维持自动扩展变分贝叶,用于增强抽样(Rave)

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Here we propose the reweighted autoencoded variational Bayes for enhanced sampling (RAVE) method, a new iterative scheme that uses the deep learning framework of variational autoencoders to enhance sampling in molecular simulations. RAVE involves iterations between molecular simulations and deep learning in order to produce an increasingly accurate probability distribution along a low-dimensional latent space that captures the key features of the molecular simulation trajectory. Using the Kullback-Leibler divergence between this latent space distribution and the distribution of various trial reaction coordinates sampled from the molecular simulation, RAVE determines an optimum, yet nonetheless physically interpretable, reaction coordinate and optimum probability distribution. Both then directly serve as the biasing protocol for a new biased simulation, which is once again fed into the deep learning module with appropriate weights accounting for the bias, the procedure continuing until estimates of desirable thermodynamic observables are converged. Unlike recent methods using deep learning for enhanced sampling purposes, RAVE stands out in that (a) it naturally produces a physically interpretable reaction coordinate, (b) is independent of existing enhanced sampling protocols to enhance the fluctuations along the latent space identified via deep learning, and (c) it provides the ability to easily filter out spurious solutions learned by the deep learning procedure. The usefulness and reliability of RAVE is demonstrated by applying it to model potentials of increasing complexity, including computation of the binding free energy profile for a hydrophobic ligand-substrate system in explicit water with dissociation time of more than 3 min, in computer time at least twenty times less than that needed for umbrella sampling or metadynamics. Published by AIP Publishing.
机译:在这里,我们提出了用于增强的采样(RAVE)方法的重新免除的自动化变分贝叶,这是一种新的迭代方案,它利用变形Autiachoders的深层学习框架来增强分子模拟中的抽样。 RAVE涉及为了产生沿其捕获分子模拟轨迹的键具有低维潜在空间越来越精确概率分布分子模拟和深度学习之间迭代。在这种潜在空间分布和从分子模拟中采样的各种试验反应坐标之间的分布之间使用kullback-leibler分布,竞赛决定了最佳,但仍然是物理解释的,反应坐标和最佳概率分布。然后两者都直接用作新的偏置模拟的偏置协议,该偏置仿真再次进入深度学习模块,其适当的权重核对偏差,该过程继续直到所需的热力学可观察到的估计收敛。与最近的方法不同,使用深度学习以增强采样目的,狂欢中(a)它自然地产生了物理解释的反应坐标,(b)独立于现有的增强的采样协议,以增强通过深度学习所识别的潜在空间的波动(c)(c)它提供了轻松筛选深度学习程序学习的虚假解决方案的能力。通过将其应用于增加复杂性的模型电位来证明狂欢的有用性和可靠性,包括在二于3分钟的解离时间的明确水中计算疏水性配体 - 衬底系统的结合自由能曲线的计算比伞采样或元动力学所需的时间少20倍。通过AIP发布发布。

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