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Optimal updating magnitude in adaptive flat-distribution sampling

机译:自适应平分配采样中的最佳更新幅度

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We present a study on the optimization of the updating magnitude for a class of free energy methods based on flat-distribution sampling, including the Wang-Landau (WL) algorithm and metadynamics. These methods rely on adaptive construction of a bias potential that offsets the potential of mean force by histogram-based updates. The convergence of the bias potential can be improved by decreasing the updating magnitude with an optimal schedule. We show that while the asymptotically optimal schedule for the single-bin updating scheme (commonly used in the WL algorithm) is given by the known inverse-time formula, that for the Gaussian updating scheme (commonly used in metadynamics) is often more complex. We further show that the single-bin updating scheme is optimal for very long simulations, and it can be generalized to a class of bandpass updating schemes that are similarly optimal. These bandpass updating schemes target only a few long-range distribution modes and their optimal schedule is also given by the inverse-time formula. Constructed from orthogonal polynomials, the bandpass updating schemes generalize the WL and Langfeld-LuciniRago algorithms as an automatic parameter tuning scheme for umbrella sampling. Published by AIP Publishing.
机译:我们介绍了基于平面分布采样的一类自由能方法的优化研究,包括王兰(WL)算法和Metadynamics。这些方法依赖于偏置偏置电位的自适应构造,其通过基于直方图的更新来抵消均值的平均力的潜力。通过降低具有最佳时间表的更新幅度,可以提高偏置电位的收敛。我们认为,虽然由已知的逆时间公式给出的单箱更新方案(常用于WL算法中)的渐近最佳时间表,但是对于高斯更新方案(在Metadynamics中常用)而言通常更复杂。我们进一步表明,单箱更新方案对于很长的仿真是最佳的,并且它可以推广到一类类似地最佳的带通更新方案。这些带通更新方案仅目标几种远程分布模式,并且其最佳时间表也由逆时间公式给出。 BANDIPS更新方案从正交多项式构造,将WL和LUNGFELD-LUCINIRAGO算法概括为伞采样的自动参数调谐方案。通过AIP发布发布。

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