论文标题

自旋系统中采样和相过渡指示的生成模型

Generative models for sampling and phase transition indication in spin systems

论文作者

Singh, Japneet, Arora, Vipul, Gupta, Vinay, Scheurer, Mathias S.

论文摘要

最近,生成的机器学习模型在物理学上已广受欢迎,这是基于提高马尔可夫链蒙特卡洛技术效率以及探索其捕获实验数据分布的潜力的目标。由于它们生成看起来对人眼睛现实的图像的能力的动机,我们在这里研究生成的对抗网络(GAN)作为学习旋转配置分布和生成样品的工具,并以外部调谐参数(例如温度)为条件。我们建议通过利用对称性并最大程度地减少生成样本之间的相关性来有效地表示物理状态的方法。我们以二维XY模型为例,对各种修改进行了详细评估,并在我们提出的隐式生成模型中找到了可观的改进。还表明,即使在关键区域未经训练的情况下,该模型也可以在相变附近可靠地生成样品。除了使用模型生成的样品通过评估可观察结果捕获相变的样品,我们还通过构建模型对调谐参数变化的敏感性来构建测量模型,展示了该模型本身如何用作过渡的无监督指标。

Recently, generative machine-learning models have gained popularity in physics, driven by the goal of improving the efficiency of Markov chain Monte Carlo techniques and of exploring their potential in capturing experimental data distributions. Motivated by their ability to generate images that look realistic to the human eye, we here study generative adversarial networks (GANs) as tools to learn the distribution of spin configurations and to generate samples, conditioned on external tuning parameters, such as temperature. We propose ways to efficiently represent the physical states, e.g., by exploiting symmetries, and to minimize the correlations between generated samples. We present a detailed evaluation of the various modifications, using the two-dimensional XY model as an example, and find considerable improvements in our proposed implicit generative model. It is also shown that the model can reliably generate samples in the vicinity of the phase transition, even when it has not been trained in the critical region. On top of using the samples generated by the model to capture the phase transition via evaluation of observables, we show how the model itself can be employed as an unsupervised indicator of transitions, by constructing measures of the model's susceptibility to changes in tuning parameters.

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