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首页> 外文期刊>Journal of Computational Physics >Computing the partition function, ensemble averages, and density of states for lattice spin systems by sampling the mean
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Computing the partition function, ensemble averages, and density of states for lattice spin systems by sampling the mean

机译:通过采样均值来计算晶格自旋系统的分区函数,集合平均和状态密度

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摘要

An algorithm to approximately calculate the partition function (and subsequently ensemble averages) and density of states of lattice spin systems through non-Monte-Carlo random sampling is developed. This algorithm (called the sampling-the-mean algorithm) can be applied to models where the up or down spins at lattice nodes interact to change the spin states of other lattice nodes, especially non-Ising-like models with long-range interactions such as the biological model considered here. Because it is based on the Central Limit Theorem of probability, the sampling-the-mean algorithm also gives estimates of the error in the partition function, ensemble averages, and density of states. Easily implemented parallelization strategies and error minimizing sampling strategies are discussed. The sampling-the-mean method works especially well for relatively small systems, systems with a density of energy states that contains sharp spikes or oscillations, or systems with little a priori knowledge of the density of states.
机译:开发了一种通过非蒙特卡洛随机抽样近似计算晶格自旋系统的分区函数(以及随后的集合平均)和状态密度的算法。该算法(称为均值采样算法)可应用于晶格节点上的自旋向上或向下自旋相互作用以更改其他晶格节点的自旋状态的模型,尤其是具有长距离交互作用的非Ising型模型,例如作为这里考虑的生物学模型。由于均值采样算法是基于概率的中心极限定理,因此还可以估算分区函数中的误差,集合平均和状态密度。讨论了易于实现的并行化策略和误差最小化采样策略。均值采样方法对于相对较小的系统,具有包含尖峰或振荡的能量状态密度的系统或对状态密度没有先验知识的系统特别有效。

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