We apply the Hierarchical Autoregressive Neural (HAN) network sampling algorithm to the two-dimensional $Q$-state Potts model and perform simulations around the phase transition at $Q=12$. We quantify the performance of the approach in the vicinity of the first-order phase transition and compare it with that of the Wolff cluster algorithm. We find a significant improvement as far as the statistical uncertainty is concerned at a similar numerical effort. In order to efficiently train large neural networks we introduce the technique of pre-training. It allows to train some neural networks using smaller system sizes and then employing them as starting configurations for larger system sizes. This is possible due to the recursive construction of our hierarchical approach. Our results serve as a demonstration of the performance of the hierarchical approach for systems exhibiting bimodal distributions. Additionally, we provide estimates of the free energy and entropy in the vicinity of the phase transition with statistical uncertainties of the order of $10^{-7}$ for the former and $10^{-3}$ for the latter based on a statistics of $10^6$ configurations.
翻译:我们将高级自动递减神经系统(HAN)网络抽样算法应用于二维的Q$-st State Potts模型,并围绕阶段过渡进行模拟,以12美元计12美元。我们量化了在第一阶段过渡附近该方法的性能,并将其与沃尔夫夫集团算法的性能进行比较。我们发现,就统计不确定性而言,在类似数字努力方面有很大的改进。为了有效地培训大型神经网络,我们引入了培训前技术。它允许用较小的系统规模培训一些神经网络,然后将其用作较大系统规模的启动配置。这有可能是因为我们分级方法的循环构建。我们的结果是对显示双模式分布的系统分级方法的性能的示范。此外,我们根据10美元配置的统计,提供了在阶段过渡附近自由能源和通气的估计数,其中前者为10 7美元,后者为10 3美元。