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Supervised Learning by Chiral-Network-Based Photonic Quantum Computing
W. Yan, Ying-Jie Zhang, Z. Man, Heng Fan, Yun-Jie Xia·August 30, 2021
Physics
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Abstract
Benefiting from the excellent control of single photons realized by the emitter-photon-chiral couplings, we propose a novel potential photonic-quantum-computation scheme to perform the supervised learning tasks. The gates for photonic quantum computation are realized by properly designed atom-photon-chiral couplings. The quantum algorithm of supervised learning, composed by integrating the realized gates, is implemented by the tunable gate parameters. The learning ability is demonstrated by numerically simulating the performance of regression and classification tasks.