Quantum machine learning on near-term quantum devices: Current state of supervised and unsupervised techniques for real-world applications

Y Gujju, A Matsuo, R Raymond - Physical Review Applied, 2024 - APS
The past decade has witnessed significant advancements in quantum hardware,
encompassing improvements in speed, qubit quantity, and quantum volume—a metric …

Expressibility-induced concentration of quantum neural tangent kernels

LW Yu, W Li, Q Ye, Z Lu, Z Han… - Reports on Progress in …, 2024 - iopscience.iop.org
Quantum tangent kernel methods provide an efficient approach to analyzing the
performance of quantum machine learning models in the infinite-width limit, which is of …

Distributed quantum architecture search

H Situ, Z He, S Zheng, L Li - Physical Review A, 2024 - APS
Variational quantum algorithms, inspired by neural networks, have become a novel
approach in quantum computing. However, designing efficient parameterized quantum …

Nuclear physics in the era of quantum computing and quantum machine learning

JE García‐Ramos, Á Sáiz, JM Arias… - Advanced Quantum …, 2024 - Wiley Online Library
In this paper, the application of quantum simulations and quantum machine learning is
explored to solve problems in low‐energy nuclear physics. The use of quantum computing …

A dynamic-routing algorithm based on a virtual quantum key distribution network

L Bi, M Miao, X Di - Applied Sciences, 2023 - mdpi.com
Quantum key distribution (QKD) is an encrypted communication technique based on the
principles of quantum mechanics that ensures communication security by exploiting the …

Avoiding barren plateaus via gaussian mixture model

X Shi, Y Shang - arXiv preprint arXiv:2402.13501, 2024 - arxiv.org
Variational quantum algorithms is one of the most representative algorithms in quantum
computing, which has a wide range of applications in quantum machine learning, quantum …

In situ mixer calibration for superconducting quantum circuits

N Wu, J Lin, C Xie, Z Guo, W Huang, L Zhang… - Applied Physics …, 2024 - pubs.aip.org
Mixers play a crucial role in superconducting quantum computing, primarily by facilitating
frequency conversion of signals to enable precise control and readout of quantum states …

Provable advantage of parameterized quantum circuit in function approximation

Z Yu, Q Chen, Y Jiao, Y Li, X Lu, X Wang… - arXiv preprint arXiv …, 2023 - arxiv.org
Understanding the power of parameterized quantum circuits (PQCs) in accomplishing
machine learning tasks is one of the most important questions in quantum machine learning …

Quantum classifiers with a trainable kernel

L Xu, X Zhang, M Li, S Shen - Physical Review Applied, 2024 - APS
Kernel function plays a crucial role in machine learning algorithms such as classifiers. In this
paper, we aim to improve the classification performance and reduce the reading out burden …

Design and analysis of quantum machine learning: a survey

L Chen, T Li, Y Chen, X Chen, M Wozniak… - Connection …, 2024 - Taylor & Francis
Machine learning has demonstrated tremendous potential in solving real-world problems.
However, with the exponential growth of data amount and the increase of model complexity …