摘要: Variational quantum circuits (VQCs) built upon noisy intermediate-scale
quantum (NISQ) hardware, in conjunction with classical processing, constitute a
promising architecture for quantum simulations, classical optimization, and
machine learning. However, the required VQC depth to demonstrate a quantum
advantage over classical schemes is beyond the reach of available NISQ devices.
Supervised learning assisted by an entangled sensor network (SLAEN) is a
distinct paradigm that harnesses VQCs trained by classical machine-learning
algorithms to tailor multipartite entanglement shared by sensors for solving
practically useful data-processing problems. Here, we report the first
experimental demonstration of SLAEN and show an entanglement-enabled reduction
in the error probability for classification of multidimensional radio-frequency
signals. Our work paves a new route for quantum-enhanced data processing and
its applications in the NISQ era.