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Estimating thermodynamic expectations and free energies in expanded ensemble simulations: Systematic variance reduction through conditioning

机译:估算扩展集合模拟中的热力学期望和自由能:通过调节减少系统方差

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Markov chain Monte Carlo methods are primarily used for sampling from a given probability distribution and estimating multi-dimensional integrals based on the information contained in the generated samples. Whenever it is possible, more accurate estimates are obtained by combining Monte Carlo integration and integration by numerical quadrature along particular coordinates. We show that this variance reduction technique, referred to as conditioning in probability theory, can be advantageously implemented in expanded ensemble simulations. These simulations aim at estimating thermodynamic expectations as a function of an external parameter that is sampled like an additional coordinate. Conditioning therein entails integrating along the external coordinate by numerical quadrature. We prove variance reduction with respect to alternative standard estimators and demonstrate the practical efficiency of the technique by estimating free energies and characterizing a structural phase transition between two solid phases. Published by AIP Publishing.
机译:马尔可夫链蒙特卡罗方法主要用于根据所产生的样本中包含的信息来对给定的概率分布和估计多维积分来采样。无论何时,通过沿着特定坐标组合Monte Carlo集成和集成,通过组合Monte Carlo集成和集成来获得更准确的估计。我们表明,在概率理论中称为调节的这种方差还原技术可以有利地在扩展的集合中实现。这些模拟旨在估算作为对其他坐标类似的外部参数的函数的热力学期望。其中调节有必要通过数字正交沿着外部坐标集成。我们通过估计自由能和表征两种固相之间的结构相转变来证明替代标准估计器的方差减少,并证明了技术的实际效率。通过AIP发布发布。

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