Quantum machine learning of graph-structured data

authored by
Kerstin Beer, Megha Khosla, Julius Köhler, Tobias J. Osborne, Tianqi Zhao
Abstract

Graph structures are ubiquitous throughout the natural sciences. Here we develop an approach that exploits the quantum source's graph structure to improve learning via an arbitrary quantum neural network (QNN) ansatz. In particular, we devise and optimize a self-supervised objective to capture the information-theoretic closeness of the quantum states in the training of a QNN. Numerical simulations show that our approach improves the learning efficiency and the generalization behavior of the base QNN. On a practical note, scalable quantum implementations of the learning procedure described in this paper are likely feasible on the next generation of quantum computing devices.

Organisation(s)
Institute of Theoretical Physics
CRC 1227 Designed Quantum States of Matter (DQ-mat)
External Organisation(s)
Macquarie University
Delft University of Technology
Type
Article
Journal
Physical Review A
Volume
108
ISSN
2469-9926
Publication date
10.07.2023
Publication status
Published
Peer reviewed
Yes
ASJC Scopus subject areas
Atomic and Molecular Physics, and Optics
Electronic version(s)
https://doi.org/10.48550/arXiv.2103.10837 (Access: Open)
https://doi.org/10.1103/PhysRevA.108.012410 (Access: Closed)