Revealing quantum chaos with machine learning

02/25/2019
by   Y. A. Kharkov, et al.
0

Understanding the properties of quantum matter is an outstanding challenge in science. In this work, we demonstrate how machine learning methods can be successfully applied for the classification of various regimes in single-particle and many-body systems. We realize neural network algorithms that perform a classification between regular and chaotic behavior in quantum billiard models with remarkably high accuracy. By taking this method further, we show that machine learning techniques allow to pin down the transition from integrability to many-body quantum chaos in Heisenberg XXZ spin chains. Our results pave the way for exploring the power of machine learning tools for revealing exotic phenomena in complex quantum many-body systems.

READ FULL TEXT

page 7

page 8

research
06/24/2019

Machine Learning Phase Transitions with a Quantum Processor

Machine learning has emerged as a promising approach to study the proper...
research
02/07/2020

Finding Quantum Critical Points with Neural-Network Quantum States

Finding the precise location of quantum critical points is of particular...
research
08/05/2014

Machine learning for many-body physics: The case of the Anderson impurity model

Machine learning methods are applied to finding the Green's function of ...
research
12/12/2022

Hardware-efficient learning of quantum many-body states

Efficient characterization of highly entangled multi-particle systems is...
research
09/11/2023

Machine learning the dimension of a Fano variety

Fano varieties are basic building blocks in geometry - they are `atomic ...
research
11/06/2020

Correlator Convolutional Neural Networks: An Interpretable Architecture for Image-like Quantum Matter Data

Machine learning models are a powerful theoretical tool for analyzing da...
research
04/10/2021

Quantum Machine Learning for Power System Stability Assessment

Transient stability assessment (TSA), a cornerstone for resilient operat...

Please sign up or login with your details

Forgot password? Click here to reset