Litcius/Paper detail

Visualizing quantum phases and identifying quantum phase transitions by nonlinear dimensional reduction

Yuan Yang, Zheng-Zhi Sun, Shi-Ju Ran, Gang Su

2021Physical review. B./Physical review. B20 citationsDOIOpen Access PDF

Abstract

Identifying quantum phases and phase transitions is key to understanding complex phenomena in statistical physics. In this work, we propose an unconventional strategy to access quantum phases and phase transitions by visualization based on the distribution of ground states in Hilbert space. By mapping the quantum states in Hilbert space onto a two-dimensional feature space using an unsupervised machine learning method, distinct phases can be directly specified and quantum phase transitions can be well identified. Our proposal is benchmarked on gapped, critical, and topological phases in several strongly correlated spin systems. As this proposal directly learns quantum phases and phase transitions from the distributions of the quantum states, it does not require priori knowledge of order parameters of physical systems, which thus indicates a perceptual route to identify quantum phases and phase transitions particularly in complex systems by visualization through learning.

Topics & Concepts

Quantum phasesQuantum phase transitionQuantum stateQuantumStatistical physicsHilbert spacePhysicsComputer scienceTheoretical physicsQuantum mechanicsQuantum many-body systemsStatistical Mechanics and EntropyModel Reduction and Neural Networks