Decoding quantum field theory with machine learning

被引:0
|
作者
Daniel Grimmer
Irene Melgarejo-Lermas
José Polo-Gómez
Eduardo Martín-Martínez
机构
[1] University of Oxford,Reuben College
[2] University of Oxford,Faculty of Philosophy
[3] University of Waterloo,Institute for Quantum Computing
[4] University of Waterloo,Department of Applied Mathematics
[5] Perimeter Institute for Theoretical Physics,undefined
关键词
Lattice Quantum Field Theory; Nonperturbative Effects;
D O I
暂无
中图分类号
学科分类号
摘要
We demonstrate how one can use machine learning techniques to bypass the technical difficulties of designing an experiment and translating its outcomes into concrete claims about fundamental features of quantum fields. In practice, all measurements of quantum fields are carried out through local probes. Despite measuring only a small portion of the field, such local measurements have the capacity to reveal many of the field’s global features. This is because, when in equilibrium with their environments, quantum fields store global information locally, albeit in a scrambled way. We show that neural networks can be trained to unscramble this information from data generated from a very simple one-size-fits-all local measurement protocol. To illustrate this general claim we will consider three non-trivial features of the field as case studies: a) how, as long as the field is in a stationary state, a particle detector can learn about the field’s boundary conditions even before signals have time to propagate from the boundary to the detector, b) how detectors can determine the temperature of the quantum field even without thermalizing with it, and c) how detectors can distinguish between Fock states and coherent states even when the first and second moments of all their quadrature operators match. Each of these examples uses the exact same simple fixed local measurement protocol and machine-learning ansatz successfully. This supports the claim that the framework proposed here can be applied to nearly any kind of local measurement on a quantum field to reveal nearly any of the field’s global properties in a one-size-fits-all manner.
引用
收藏
相关论文
共 50 条
  • [1] Decoding quantum field theory with machine learning
    Grimmer, Daniel
    Melgarejo-Lermas, Irene
    Polo-Gomez, Jose
    Martin-Martinez, Eduardo
    JOURNAL OF HIGH ENERGY PHYSICS, 2023, 2023 (08)
  • [2] Machine learning methods in quantum computing theory
    Fastovets, D., V
    Bogdanov, Yu, I
    Bantysh, B., I
    Lukichev, V. F.
    INTERNATIONAL CONFERENCE ON MICRO- AND NANO-ELECTRONICS 2018, 2019, 11022
  • [3] Quantum field-theoretic machine learning
    Bachtis, Dimitrios
    Aarts, Gert
    Lucini, Biagio
    PHYSICAL REVIEW D, 2021, 103 (07)
  • [4] Applications of the Extension Theory in Machine Learning Field
    Sandru, Ovidiu Ilie
    Vladareanu, Luige
    Schiopu, Paul
    Sandru, Alexandra
    Vladareanu, Victor
    2013 INTERNATIONAL CONFERENCE ON ADVANCED MECHATRONIC SYSTEMS (ICAMECHS), 2013, : 524 - 529
  • [5] Machine Learning based Decoding of Heavy Hexagonal QECC for Asymmetric Quantum Noise
    Bhoumik, Debasmita
    Majumdar, Ritajit
    Madan, Dhiraj
    Sur-Kolay, Susmita
    2024 IEEE COMPUTER SOCIETY ANNUAL SYMPOSIUM ON VLSI, ISVLSI, 2024, : 246 - 251
  • [6] Theory of machine learning based on nonrelativistic quantum mechanics
    Nieto-Chaupis, Huber
    INTERNATIONAL JOURNAL OF QUANTUM INFORMATION, 2021, 19 (04)
  • [7] Decoding lithium's subtle phase stability with a machine learning force field
    Shen, Yiheng
    Xie, Wei
    JOURNAL OF MATERIALS CHEMISTRY A, 2025, 13 (10) : 7119 - 7124
  • [8] Mean-field theory of Boltzmann machine learning
    Tanaka, T
    PHYSICAL REVIEW E, 1998, 58 (02) : 2302 - 2310
  • [9] Quantum-Classical Simulation of Quantum Field Theory by Quantum Circuit Learning
    Ikeda, Kazuki
    ANNALEN DER PHYSIK, 2025,
  • [10] Boltzmann Machine learning and Mean Field Theory learning with momentum terms
    Hagiwara, Masafumi
    1600, Ablex Publ Corp, Norwood, NJ, United States (02): : 1 - 2