论文标题
自学对生成旋转玻璃的学习,并具有归一化流量
Self-Supervised Learning of Generative Spin-Glasses with Normalizing Flows
论文作者
论文摘要
旋转玻璃是通用模型,可以在统计物理和计算机科学的界面上捕获多体系统的复杂行为,包括离散优化,图形模型中的推断以及自动推理。由于其状态空间的组合爆炸,计算这种复杂系统的基本结构和动力学非常困难。在这里,我们开发了深层生成的连续旋转玻璃分布,并具有标准化流程,以模拟通用离散问题中的相关性。我们通过自动从旋转玻璃本身生成数据来使用自我监督的学习范式。我们证明,可以成功地学习旋转玻璃相的关键物理和计算特性,包括亚稳态状态之间的多模式稳态分布和拓扑结构。值得注意的是,我们观察到学习本身对应于训练有素的归一化流动层中的旋转玻璃相变。逆归一化流量学会执行可逆的多尺度粗粒操作,这与典型的不可逆重新规范化组技术截然不同。
Spin-glasses are universal models that can capture complex behavior of many-body systems at the interface of statistical physics and computer science including discrete optimization, inference in graphical models, and automated reasoning. Computing the underlying structure and dynamics of such complex systems is extremely difficult due to the combinatorial explosion of their state space. Here, we develop deep generative continuous spin-glass distributions with normalizing flows to model correlations in generic discrete problems. We use a self-supervised learning paradigm by automatically generating the data from the spin-glass itself. We demonstrate that key physical and computational properties of the spin-glass phase can be successfully learned, including multi-modal steady-state distributions and topological structures among metastable states. Remarkably, we observe that the learning itself corresponds to a spin-glass phase transition within the layers of the trained normalizing flows. The inverse normalizing flows learns to perform reversible multi-scale coarse-graining operations which are very different from the typical irreversible renormalization group techniques.