Machine learning with minimal use of quantum computers: Provable advantages in Learning Under Quantum Privileged Information (LUQPI)
Vasily Bokov (1,2,3), Lisa Kohl (4), Sebastian Schmitt (3), Vedran Dunjko (1,2) ((1) aQa, Leiden University, The Netherlands, (2) LIACS, Leiden University, Leiden, The Netherlands, (3) Honda Research Institute Europe GmbH, Offenbach, Germany, (4) Cryptology Group, CWI Amsterdam

TL;DR
This paper demonstrates that using quantum computers solely as feature extractors during training can provide exponential advantages over classical methods in learning tasks, even with minimal quantum involvement.
Contribution
It introduces the LUQPI framework, formalizes quantum feature extraction during training, and shows exponential quantum-classical separations with practical numerical experiments.
Findings
Quantum feature extraction during training yields exponential advantages.
LUQPI framework formalizes quantum-augmented learning with minimal quantum use.
Numerical experiments show performance gains in many-body physics tasks.
Abstract
Quantum machine learning (QML) is often listed as a promising candidate for useful applications of quantum computers, in part due to numerous proofs of possible quantum advantages. A central question is how small a role quantum computers can play while still enabling provable learning advantages over classical methods. We study an especially restricted setting in which a quantum computer is used only as a feature extractor: it acts independently on individual data points, without access to labels or global dataset information, is available only to augment the training set, and is not available at deployment. Training and deployment are therefore carried out by fully classical learners on a dataset augmented with quantum-generated features. We formalize this model by adapting the classical framework of Learning Under Privileged Information (LUPI) to the quantum case, which we call…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum many-body systems · Quantum Information and Cryptography
