首页> 外文期刊>Journal of chemical theory and computation: JCTC >AdaptiveBandit: A Multi-armed Bandit Framework for Adaptive Sampling in Molecular Simulations
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AdaptiveBandit: A Multi-armed Bandit Framework for Adaptive Sampling in Molecular Simulations

机译:AdaptiveBandit:用于分子模拟中的自适应采样的多武装强盗框架

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摘要

Sampling from the equilibrium distribution has always been a major problem in molecular simulations due to the very high dimensionality of the conformational space. Over several decades, many approaches have been used to overcome the problem. In particular, we focus on unbiased simulation methods such as parallel and adaptive sampling. Here, we recast adaptive sampling schemes on the basis of multi-armed bandits and develop a novel adaptive sampling algorithm under this framework, AdaptiveBandit. We test it on multiple simplified potentials and in a protein folding scenario. We find that this framework performs similarly to or better than previous methods in every type of test potential. Furthermore, it provides a novel framework to develop new sampling algorithms with better asymptotic characteristics.
机译:由于构象空间的高度,从平衡分布的取样始终是分子模拟中的主要问题。 多十年来,许多方法已被用来克服这个问题。 特别是,我们专注于不偏不倚的仿真方法,如平行和自适应采样。 在这里,我们基于多武装匪划分的自适应采样方案,并在该框架下开发一种新的自适应采样算法,适应性带。 我们在多种简化的潜力和蛋白质折叠方案中测试它。 我们发现此框架类似于每种类型的测试潜力中的先前方法表现类似于或更好。 此外,它提供了一种新的框架,用于开发具有更好的渐近特性的新采样算法。

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