Variational quantum reinforcement learning via evolutionary optimization
Recent advances in classical reinforcement learning (RL) and quantum computation point to
a promising direction for performing RL on a quantum computer. However, potential …
a promising direction for performing RL on a quantum computer. However, potential …
Quantum convolutional neural network for image classification
G Chen, Q Chen, S Long, W Zhu, Z Yuan… - Pattern Analysis and …, 2023 - Springer
In this paper we propose two scale-inspired local feature extraction methods based on
Quantum Convolutional Neural Network (QCNN) in the Tensorflow quantum framework for …
Quantum Convolutional Neural Network (QCNN) in the Tensorflow quantum framework for …
Tensor networks for quantum machine learning
HM Rieser, F Köster, AP Raulf - Proceedings of the …, 2023 - royalsocietypublishing.org
Once developed for quantum theory, tensor networks (TNs) have been established as a
successful machine learning (ML) paradigm. Now, they have been ported back to the …
successful machine learning (ML) paradigm. Now, they have been ported back to the …
Encoding of matrix product states into quantum circuits of one-and two-qubit gates
SJ Ran - Physical Review A, 2020 - APS
The matrix product state (MPS) belongs to the most important models in, for example,
quantum information sciences and condensed-matter physics. However, realizing an N …
quantum information sciences and condensed-matter physics. However, realizing an N …
An end-to-end trainable hybrid classical-quantum classifier
We introduce a hybrid model combining a quantum-inspired tensor network and a
variational quantum circuit to perform supervised learning tasks. This architecture allows for …
variational quantum circuit to perform supervised learning tasks. This architecture allows for …
Self-correcting quantum many-body control using reinforcement learning with tensor networks
Quantum many-body control is a central milestone en route to harnessing quantum
technologies. However, the exponential growth of the Hilbert space dimension with the …
technologies. However, the exponential growth of the Hilbert space dimension with the …
Tensornetwork for machine learning
We demonstrate the use of tensor networks for image classification with the TensorNetwork
open source library. We explain in detail the encoding of image data into a matrix product …
open source library. We explain in detail the encoding of image data into a matrix product …
Tensor networks for interpretable and efficient quantum-inspired machine learning
SJ Ran, G Su - Intelligent Computing, 2023 - spj.science.org
It is a critical challenge to simultaneously achieve high interpretability and high efficiency
with the current schemes of deep machine learning (ML). The tensor network (TN), a well …
with the current schemes of deep machine learning (ML). The tensor network (TN), a well …
Superpixel image classification with graph attention networks
PHC Avelar, AR Tavares… - 2020 33rd SIBGRAPI …, 2020 - ieeexplore.ieee.org
This paper presents a methodology for image classification using Graph Neural Network
(GNN) models. We transform the input images into region adjacency graphs (RAGs), in …
(GNN) models. We transform the input images into region adjacency graphs (RAGs), in …
[HTML][HTML] Multi-class quantum classifiers with tensor network circuits for quantum phase recognition
M Lazzarin, DE Galli, E Prati - Physics Letters A, 2022 - Elsevier
Hybrid quantum-classical algorithms based on variational circuits are a promising approach
to quantum machine learning problems for near-term devices, but the selection of the …
to quantum machine learning problems for near-term devices, but the selection of the …