89
Kevin
Personal Homepage
Paper Publications
A hybrid quantum-classical generative adversarial networks algorithm based on inherited layerwise learning with circle-connectivity circuit
Hits :

DOI Number:10.1007/s11128-022-03719-y

Journal:Quantum Information Processing

Abstract:Quantum generative adversarial networks (QGANs) have a potential exponential advantage over classical GANs, which has attracted widespread attention. However, it also faces the barren plateau problem, i.e., the gradient of variational quantum circuits (VQCs) initialized with random initial parameters decreases exponentially as the number of circuit layers and parameters increases. In order to solve this problem, a hybrid quantum-classical GANs algorithm based on inherited layerwise learning with circle-connectivity circuit (ILL-QGAN) is proposed. The shallow-depth circuit is gradually added during optimization process, and only subsets of parameters are updated, which reduces the number of parameters and circuit depth in each training step. Besides, the parameters trained from the previous layer are inherited to the next layer, which provides the favorable initial parameters for the later. In addition, in order to offer relatively favorable expressibility and entangling capability, the generator uses a more near-term circuit structure, i.e., circle connectivity, to construct VQCs. Finally, the BAS and handwritten experiments are conducted on PennyLane to show our algorithm can faster converge to the Nash equilibrium point and obtain higher accuracy than existing quantum algorithms. Since the shallow-depth and circle-connectivity circuit are used, our algorithm is preferable for execution on noisy intermediate-scale quantum devices.

Indexed by:Journal paper

Document Code:(2022) 21:372

Document Type:J

Volume:21

Issue:11

Page Number:372

Translation or Not:no

Date of Publication:2022-10-19

Included Journals:SCI

Personal information

Professor
Supervisor of Doctorate Candidates
Supervisor of Master's Candidates

Gender : Male

Education Level : With Certificate of Graduation for Doctorate Study

Degree : Doctoral Degree in Engineering

Status : 在岗

School/Department : 软件学院

Discipline:Other Specialties in Software Engineering
Computer Science and Technology

Business Address : 信息科技大楼(临江楼)A1107-1108

Contact Information : 18795809602

PostalAddress : 科技信息大楼(临江楼)A1107-1108

Telephone : 18795809602

Email : wenjiel@163.com

You are visitors

The Last Update Time : 2024.4.29


Copyright©2019 Nanjing University of Information Science and Technology·Network Information Center

MOBILE Version