Quantum artificial neural network architectures and components

被引:93
|
作者
Narayanan, A [1 ]
Menneer, T [1 ]
机构
[1] Univ Exeter, Sch Engn & Comp Sci, Exeter EX4 4PT, Devon, England
关键词
D O I
10.1016/S0020-0255(00)00055-4
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
It is shown by classical simulation and experimentation that quantum artificial neural networks (QUANNs) are more efficient and in some cases more powerful than classical artificial neural networks (CLANNs) for a variety of experimental tasks. This effect is particularly noticeable with larger and more complex domains. The gain in efficiency is achieved with no generalisation loss in most cases. QUANNs are also more powerful than CLANNs, again for some of the tasks examined, in terms of what the network can learn. What is more, it appears that not all components of a QUANN architecture need to to be quantum for these advantages to surface. It is demonstrated that a fully quantum neural network has no advantage over a partly quantum network and may in fact produce worse results. Overall, this work provides a first insight into the expected behaviour of individual components of QUANNs, if and when quantum hardware is ever built, and raises questions about the interface between quantum and classical components of future QUANNs. (C) 2000 Elsevier Science Inc. All rights reserved.
引用
收藏
页码:231 / 255
页数:25
相关论文
共 50 条
  • [31] Quantum implementation of an artificial feed-forward neural network
    Tacchino, Francesco
    Barkoutsos, Panagiotis
    Macchiavello, Chiara
    Tavernelli, Ivano
    Gerace, Dario
    Bajoni, Daniele
    QUANTUM SCIENCE AND TECHNOLOGY, 2020, 5 (04)
  • [32] Artificial stochastic neural network on the base of double quantum wells
    Pavlovsky, O., V
    Dorozhinsky, V., I
    Mostovoy, S. D.
    MODERN PHYSICS LETTERS B, 2022, 36 (01):
  • [33] A quantum artificial neural network for stock closing price prediction
    Liu, Ge
    Ma, Wenping
    INFORMATION SCIENCES, 2022, 598 : 75 - 85
  • [34] Mixed Quantum State Dynamics Estimation with Artificial Neural Network
    Kim, Changjun
    Rhee, June-Koo Kevin
    Lee, Woojun
    Ahn, Jaewook
    2018 INTERNATIONAL CONFERENCE ON INFORMATION AND COMMUNICATION TECHNOLOGY CONVERGENCE (ICTC), 2018, : 740 - 747
  • [35] Artificial neural network syndrome decoding on IBM quantum processors
    Hall, Brhyeton
    Gicev, Spiro
    Usman, Muhammad
    PHYSICAL REVIEW RESEARCH, 2024, 6 (03):
  • [36] Artificial neural network encoding of molecular wavefunctions for quantum computing
    Hagai, Masaya
    Sugiyama, Mahito
    Tsuda, Koji
    Yanai, Takeshi
    DIGITAL DISCOVERY, 2023, 2 (03): : 634 - 650
  • [37] Development of knowledge based artificial neural network models for microwave components
    Watson, PM
    Gupta, KC
    Mahajan, RL
    1998 IEEE MTT-S INTERNATIONAL MICROWAVE SYMPOSIUM DIGEST, VOLS 1-3, 1998, : 9 - 12
  • [38] Analysis of Artificial Neural Network Architectures for Modeling Smart Lighting Systems for Energy Savings
    Garces-Jimenez, Alberto
    Luis Castillo-Sequera, Jose
    Del Corte-Valiente, Antonio
    Manuel Gomez-Pulido, Josi
    Dominguez Gonzalez-Seco, Esteban Patricio
    IEEE ACCESS, 2019, 7 : 119881 - 119891
  • [39] Comparing feedforward and recurrent neural network architectures with human behavior in artificial grammar learning
    Andrea Alamia
    Victor Gauducheau
    Dimitri Paisios
    Rufin VanRullen
    Scientific Reports, 10
  • [40] Analysis of artificial neural network architectures to model smart lighting systems for saving energy
    Garcés-Jiménez, Alberto
    Castillo-Sequera, José Luis
    Corte-Valiente, Antonio Del
    Gómez-Pulido, José Manuel
    González-Seco, Esteban Patricio Domínguez
    IEEE Access, 2019, 7 : 1 - 10