Quenched Quantum Feature Maps
Quenched Quantum Feature Maps
We propose a quantum feature mapping technique that leverages the quench dynamics of a quantum spin glass to extract complex data patterns at the quantum-advantage level for academic and industrial applications. We demonstrate that encoding a dataset information into disordered quantum many-body spin-glass problems, followed by a nonadiabatic evolution and feature extraction via measurements of expectation values, significantly enhances machine learning (ML) models. By analyzing the performance of our protocol over a range of evolution times, we empirically show that ML models benefit most from feature representations obtained in the fast coherent regime of a quantum annealer, particularly near the critical point of the quantum dynamics. We demonstrate the generalization of our technique by benchmarking on multiple high-dimensional datasets, involving over a hundred features, in applications including drug discovery and medical diagnostics. Moreover, we compare against a comprehensive suite of state-of-the-art classical ML models and show that our quantum feature maps can enhance the performance metrics of the baseline classical models up to 210%. Our work presents the first quantum ML demonstrations at the quantum-advantage level, bridging the gap between quantum supremacy and useful real-world academic and industrial applications.
Anton Simen、Carlos Flores-Garrigos、Murilo Henrique De Oliveira、Gabriel Dario Alvarado Barrios、Juan F. R. Hernández、Qi Zhang、Alejandro Gomez Cadavid、Yolanda Vives-Gilabert、José D. Martín-Guerrero、Enrique Solano、Narendra N. Hegade、Archismita Dalal
计算技术、计算机技术
Anton Simen,Carlos Flores-Garrigos,Murilo Henrique De Oliveira,Gabriel Dario Alvarado Barrios,Juan F. R. Hernández,Qi Zhang,Alejandro Gomez Cadavid,Yolanda Vives-Gilabert,José D. Martín-Guerrero,Enrique Solano,Narendra N. Hegade,Archismita Dalal.Quenched Quantum Feature Maps[EB/OL].(2025-08-28)[2025-09-06].https://arxiv.org/abs/2508.20975.点此复制
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