判别式
生成语法
概率逻辑
机器学习
直觉
计算机科学
生成模型
量子
人工智能
物理
量子力学
哲学
认识论
作者
Julian Arnold,Frank Schäfer,Alan Edelman,Christoph Bruder
标识
DOI:10.1103/physrevlett.132.207301
摘要
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.
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