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Quantum Machine Learning
Quantum Thermodynamics
Improving Quantum Machine Learning via Heat-Bath Algorithmic Cooling
DOAJ
Authors: Nayeli A. RodrÃguez-Briones, Daniel K. Park
Year
2026
Paper ID
51925
Status
Peer-reviewed
Abstract Read
~2 min
Abstract Words
111
Citations
N/A
Abstract
This work introduces an approach rooted in quantum thermodynamics to enhance sampling efficiency in quantum machine learning (QML). We propose conceptualizing quantum supervised learning as a thermodynamic cooling process. Building on this concept, we develop a quantum refrigerator protocol that enhances sample efficiency during training and prediction without the need for Grover iterations or quantum phase estimation. Inspired by heat-bath algorithmic cooling protocols, our method alternates entropy compression and thermalization steps to decrease the entropy of qubits, increasing polarization toward the dominant bias. This technique minimizes the computational overhead associated with estimating classification scores and gradients, presenting a practical and efficient solution for QML algorithms compatible with noisy intermediate-scale quantum devices.
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- This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
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- This work introduces an approach rooted in quantum thermodynamics to enhance sampling efficiency in quantum machine learning (QML).
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