Machine Learning: Science and Technology (Jan 2023)

Quantum Kerr learning

  • Junyu Liu,
  • Changchun Zhong,
  • Matthew Otten,
  • Anirban Chandra,
  • Cristian L Cortes,
  • Chaoyang Ti,
  • Stephen K Gray,
  • Xu Han

DOI
https://doi.org/10.1088/2632-2153/acc726
Journal volume & issue
Vol. 4, no. 2
p. 025003

Abstract

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Quantum machine learning is a rapidly evolving field of research that could facilitate important applications for quantum computing and also significantly impact data-driven sciences. In our work, based on various arguments from complexity theory and physics, we demonstrate that a single Kerr mode can provide some ‘quantum enhancements’ when dealing with kernel-based methods. Using kernel properties, neural tangent kernel theory, first-order perturbation theory of the Kerr non-linearity, and non-perturbative numerical simulations, we show that quantum enhancements could happen in terms of convergence time and generalization error. Furthermore, we make explicit indications on how higher-dimensional input data could be considered. Finally, we propose an experimental protocol, that we call quantum Kerr learning , based on circuit QED.

Keywords