Arnold Julian, Schäfer Frank, Edelman Alan, Bruder Christoph
Department of Physics, University of Basel, Klingelbergstrasse 82, 4056 Basel, Switzerland.
CSAIL, Massachusetts Institute of Technology, Cambridge, Massachusetts 02139, USA.
Phys Rev Lett. 2024 May 17;132(20):207301. doi: 10.1103/PhysRevLett.132.207301.
One of the central tasks in many-body physics is the determination of phase diagrams. However, mapping out a phase diagram generally requires a great deal of human intuition and understanding. To automate this process, one can frame it as a classification task. Typically, classification problems are tackled using discriminative classifiers that explicitly model the probability of the labels for a given sample. Here we show that phase-classification problems are naturally suitable to be solved using generative classifiers based on probabilistic models of the measurement statistics underlying the physical system. Such a generative approach benefits from modeling concepts native to the realm of statistical and quantum physics, as well as recent advances in machine learning. This leads to a powerful framework for the autonomous determination of phase diagrams with little to no human supervision that we showcase in applications to classical equilibrium systems and quantum ground states.
多体物理中的核心任务之一是确定相图。然而,绘制相图通常需要大量的人类直觉和理解。为了使这个过程自动化,可以将其构建为一个分类任务。通常,分类问题使用判别式分类器来解决,这些分类器明确地对给定样本的标签概率进行建模。在这里,我们表明相分类问题自然适合使用基于物理系统测量统计概率模型的生成式分类器来解决。这种生成式方法受益于对统计和量子物理领域固有的建模概念以及机器学习的最新进展。这导致了一个强大的框架,用于在几乎没有或没有人工监督的情况下自主确定相图,我们在经典平衡系统和量子基态的应用中展示了这一点。