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Quantum reservoir computing on random regular graphs

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journal contribution
posted on 2025-10-30, 12:53 authored by Moein N Ivaki, Achilleas LazaridesAchilleas Lazarides, Tapio Ala-NissilaTapio Ala-Nissila
Quantum reservoir computing (QRC) is a low-complexity learning paradigm that combines the inherent dynamics of input-driven many-body quantum systems with classical learning techniques for nonlinear temporal data processing. Optimizing the QRC process and computing device is a complex task due to the dependence of many-body quantum systems on various factors. To explore this, we introduce a strongly interacting spin model on random regular graphs as the quantum component and investigate the interplay between static disorder, interactions, and graph connectivity, revealing their critical impact on quantum memory capacity and learnability accuracy. We tackle linear quantum and nonlinear classical tasks, and identify optimal learning and memory regimes through studying information localization, dynamical quantum correlations, and the many-body structure of the disordered Hamiltonian. In particular, we uncover the role of previously overlooked network connectivity and demonstrate how the presence of quantum correlations can significantly enhance the learning performance. Our findings thus provide guidelines for the optimal design of disordered analog quantum learning platforms.<p></p>

Funding

The European Union and the European Innovation Council through the Horizon Europe project QRC-4-ESP (Grant Agreement No. 101129663)

Academy of Finland through its QTF Center of Excellence program (Project No. 312298)

History

Related Materials

School

  • Science

Published in

Physical Review A

Volume

112

Issue

1

Publisher

American Physical Society (APS)

Version

  • VoR (Version of Record)

Rights holder

© The Author(s)

Publisher statement

It is not necessary to obtain permission to reuse this article or its components as it is available under the terms of the Creative Commons Attribution 4.0 International license. This license permits unrestricted use, distribution, and reproduction in any medium, provided attribution to the author(s) and the published article's title, journal citation, and DOI are maintained. Please note that some figures may have been included with permission from other third parties. It is your responsibility to obtain the proper permission from the rights holder directly for these figures

Acceptance date

2025-07-09

Publication date

2025-07-28

Copyright date

2025

ISSN

2469-9926

eISSN

2469-9934

Language

  • en

Depositor

Prof Tapio Ala-Nissila. Deposit date: 29 October 2025

Article number

012622