Haupttitel:
Potential and limitations of random Fourier features for dequantizing quantum machine learning
Autor*in:
Sweke, Ryan; Recio-Armengol, Erik; Jerbi, Sofiene; Gil-Fuster, Elies; Fuller, Bryce; Eisert, Jens; Meyer, Johannes Jakob
Datum der Freigabe:
2025-03-27T13:52:44Z
Abstract:
Quantum machine learning is arguably one of the most explored applications of near-term quantum devices. Much focus has been put on notions of variational quantum machine learning where {parameterized quantum circuits} (PQCs) are used as learning models. These PQC models have a rich structure which suggests that they might be amenable to efficient dequantization via {random Fourier features} (RFF). In this work, we establish necessary and sufficient conditions under which RFF does indeed provide an efficient dequantization of variational quantum machine learning for regression. We build on these insights to make concrete suggestions for PQC architecture design, and to identify structures which ar
Teil des Identifiers:
e-ISSN (online): 2521-327X
Freie Schlagwörter:
Quantum machine learning
random Fourier features
RFF
DDC-Klassifikation:
530 Physik
Publikationstyp:
Wissenschaftlicher Artikel
Zeitschrift:
Quantum: the open journal for quantum science
Verlag:
Verein zur FoĢrderung des Open Access Publizierens in den Quantenwissenschaften
Fachbereich/Einrichtung:
Physik
Dahlem Center für komplexe Quantensysteme
Anmerkungen:
Gefördert aus Open-Access-Mitteln der Freien Universität Berlin.