Abstract
Modeling many-body quantum systems is widely regarded as one of the most promising applications for near-term noisy quantum computers. However, in the near term, system size limitation will remain a severe barrier for applications in materials science or strongly correlated systems. A promising avenue of research is to combine many-body physics with machine learning for the classification of distinct phases. We present a workflow that synergizes quantum computing, many-body theory, and quantum machine learning (QML) for studying strongly correlated systems. In particular, it can capture a putative quantum phase transition of the stereotypical strongly correlated system, the Hubbard model. Following the recent proposal of the hybrid quantum-classical algorithm for the two-site dynamical mean-field theory (DMFT), we present a modification that allows the self-consistent solution of the single bath site DMFT. The modified algorithm can be generalized for multiple bath sites. This approach is used to generate a database of zero-temperature wavefunctions of the Hubbard model within the DMFT approximation. We then use a QML algorithm to distinguish between the metallic phase and the Mott insulator phase to capture the metal-to-Mott insulator phase transition. We train a recently proposed quantum convolutional neural network (QCNN) and then utilize the QCNN as a quantum classifier to capture the phase transition region. This work provides a recipe for application to other phase transitions in strongly correlated systems and represents an exciting application of small-scale quantum devices realizable with near-term technology.
| Original language | English |
|---|---|
| Article number | 18 |
| Journal | Quantum Reports |
| Volume | 7 |
| Issue number | 2 |
| DOIs | |
| State | Published - Jun 2025 |
| Externally published | Yes |
Funding
This manuscript is based on work supported by NSF DMR-1728457. This work used high-performance computational resources provided by the Louisiana Optical Network Initiative (http://www.loni.org, (accessed on 31 January 2025)) and HPC@LSU computing. HFF is supported by the National Science Foundation under Grant No. PHY-2014023. HT is supported by NSF DMR-1944974 and NSF QIS-2328752 grants. JM is supported by the US Department of Energy, Office of Science, Office of Basic Energy Sciences, under Award Number DE-SC0017861.
Keywords
- Hubbard model
- Mott transition
- dynamical mean field theory
- metal insulator transition
- quantum machine learning
- quantum neural network