Back to Search Start Over

Detecting quantum phase transitions in a frustrated spin chain via transfer learning of a quantum classifier algorithm

Authors :
Ferreira-Martins, André J.
Silva, Leandro
Palhares, Alberto
Pereira, Rodrigo
Soares-Pinto, Diogo O.
Chaves, Rafael
Canabarro, Askery
Publication Year :
2023

Abstract

The classification of phases and the detection of phase transitions are central and challenging tasks in diverse fields. Within physics, it relies on the identification of order parameters and the analysis of singularities in the free energy and its derivatives. Here, we propose an alternative framework to identify quantum phase transitions. Using the axial next-nearest neighbor Ising (ANNNI) model as a benchmark, we show how machine learning can detect three phases (ferromagnetic, paramagnetic, and a cluster of the antiphase with the floating phase). Employing supervised learning, we demonstrate the feasibility of transfer learning. Specifically, a machine trained only with nearest-neighbor interactions can learn to identify a new type of phase occurring when next-nearest-neighbor interactions are introduced. We also compare the performance of common classical machine learning methods with a version of the quantum nearest neighbors (QNN) algorithm.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.15339
Document Type :
Working Paper