Report on 2206.02806v1

Type: Peer-Review

Publication Date: 2022-07-03

Citations: 0

DOI: https://doi.org/10.21468/scipost.report.5323

Download PDF

Abstract

Machine learning has achieved dramatic success over the past decade, with applications ranging from face recognition to natural language processing.Meanwhile, rapid progress has been made in the field of quantum computation including developing both powerful quantum algorithms and advanced quantum devices.The interplay between machine learning and quantum physics holds the intriguing potential for bringing practical applications to the modern society.Here, we focus on quantum neural networks in the form of parameterized quantum circuits.We will mainly discuss different structures and encoding strategies of quantum neural networks for supervised learning tasks, and benchmark their performance utilizing Yao.jl, a quantum simulation package written in Julia Language.The codes are efficient, aiming to provide convenience for beginners in scientific works such as developing powerful variational quantum learning models and assisting the corresponding experimental demonstrations.

Locations

  • arXiv (Cornell University) - PDF

Similar Works

Action Title Year Authors
+ PDF Chat Report on 2206.02806v1 2022 Weikang Li
Zhide Lu
Dong-Ling Deng
+ PDF Chat Quantum Neural Network Classifiers: A Tutorial 2022 Weikang Li
Zhide Lu
Dong-Ling Deng
+ Quantum Neural Network Classifiers: A Tutorial 2022 Weikang Li
Zhide Lu
Dong-Ling Deng
+ VQNet: Library for a Quantum-Classical Hybrid Neural Network 2019 Zhaoyun Chen
Cheng Xue
Siming Chen
Guo‐Ping Guo
+ Learning capability of parametrized quantum circuits 2022 Dirk Heimann
Gunnar Schönhoff
Frank Kirchner
+ PDF Chat Quantum Machine Learning 2022 Savo Glisic
Beatriz Lorenzo
+ Expressive Quantum Supervised Machine Learning using Kerr-nonlinear Parametric Oscillators 2023 Yuichiro Mori
Kouhei Nakaji
Yuichiro Matsuzaki
Shiro Kawabata
+ PDF Chat A Quick Introduction to Quantum Machine Learning for Non-Practitioners 2024 Ethan N. Evans
Dominic Byrne
Matthew Cook
+ PDF Chat Training Classical Neural Networks by Quantum Machine Learning 2024 Chen-Yu Liu
En-Jui Kuo
Chu-Hsuan Abraham Lin
Sean Chen
Jason Gemsun Young
Yeong-Jar Chang
Min-Hsiu Hsieh
+ PDF Chat A Hybrid System for Learning Classical Data in Quantum States 2021 Samuel A. Stein
Ryan L'Abbate
Wenrui Mu
Yue Liu
Betis Baheri
Ying Mao
Qiang Guan
Ang Li
Bo Fang
+ VQNet 2.0: A New Generation Machine Learning Framework that Unifies Classical and Quantum 2023 Huanyu Bian
Zhilong Jia
Menghan Dou
Yuan Fang
Lei Li
Yiming Zhao
Hanchao Wang
Zhaohui Zhou
Wei Wang
Wenyu Zhu
+ TensorFlow Quantum: A Software Framework for Quantum Machine Learning 2020 Michael Broughton
Guillaume Verdon
Trevor McCourt
A.J. Gutiérrez Martínez
Jae Hyeon Yoo
Sergei V. Isakov
Philip Massey
Ramin Halavati
Murphy Yuezhen Niu
Alexander Zlokapa
+ PDF Chat Quantum Machine Learning: An Interplay Between Quantum Computing and Machine Learning 2024 Jun Qi
Chao-Han Huck Yang
Samuel Yen-Chi Chen
Pin‐Yu Chen
+ Variational quantum algorithms for machine learning: theory and applications 2023 Stefano Mangini
+ A Hybrid System for Learning Classical Data in Quantum States 2020 Samuel A. Stein
Ryan L'Abbate
Wenrui Mu
Yue Liu
Betis Baheri
Ying Mao
Qiang Guan
Ang Li
Bo Fang
+ Modern applications of machine learning in quantum sciences 2022 Anna Dawid
Julian Arnold
Borja Requena
Alexander Gresch
Marcin PƂodzieƄ
Kaelan Donatella
Kim A. Nicoli
Paolo Stornati
Rouven Koch
Miriam BĂŒttner
+ PDF Chat Report on 2101.01759v1 2021 Lukas GrĂŒnhaupt
+ PDF Chat An Introduction to Quantum Machine Learning for Engineers 2022 Osvaldo Simeone
+ GenQu: A Hybrid System for Learning Classical Data in Quantum States 2021 Samuel A. Stein
Ray Marie Tischio
Betis Baheri
Yi-Wen Chen
Ying Mao
Qiang Guan
Ang Li
Bo Fang
+ A Survey on Quantum Machine Learning: Current Trends, Challenges, Opportunities, and the Road Ahead 2023 Kamila Zaman
Alberto Marchisio
Muhammad Abdullah Hanif
Muhammad Shafique

Works That Cite This (0)

Action Title Year Authors