Experimental quantum-enhanced kernel-based machine learning on a photonic processor

Zhenghao Yin (Corresponding author), Iris Agresti (Corresponding author), Giovanni de Felice, Douglas Brown, Alexis Toumi, Ciro Pentangelo, Simone Piacentini, Andrea Crespi, Francesco Ceccarelli, Roberto Osellame, Bob Coecke, Philip Walther (Corresponding author)

Publications: Contribution to journalArticlePeer Reviewed

Abstract

Recently, machine learning has had remarkable impact in scientific to everyday-life applications. However, complex tasks often require the consumption of unfeasible amounts of energy and computational power. Quantum computation may lower such requirements, although it is unclear whether enhancements are reachable with current technologies. Here we demonstrate a kernel method on a photonic integrated processor to perform a binary classification task. We show that our protocol outperforms state-of-the-art kernel methods such as gaussian and neural tangent kernels by exploiting quantum interference, and provides further improvements in accuracy by offering single-photon coherence. Our scheme does not require entangling gates and can modify the system dimension through additional modes and injected photons. This result gives access to more efficient algorithms and to formulating tasks where quantum effects improve standard methods.
Original languageEnglish
Pages (from-to)1020–1027
Number of pages8
JournalNature Photonics
Volume19
Issue number9
Early online date2 Jun 2025
DOIs
Publication statusPublished - Sept 2025

Austrian Fields of Science 2012

  • 103025 Quantum mechanics
  • 103026 Quantum optics

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