2023
DOI: 10.1088/2632-2153/ad1007
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Scalable quantum measurement error mitigation via conditional independence and transfer learning

Changwon Lee,
Daniel K Park

Abstract: Mitigating measurement errors in quantum systems without relying on quantum error correction is of critical importance for the practical development of quantum technology. Deep learning-based quantum measurement error mitigation (QMEM) has exhibited advantages over the linear inversion method due to its capability to correct non-linear noise. However, scalability remains a challenge for both methods. In this study, we propose a scalable QMEM method that leverages the conditional independence (CI) of distant qu… Show more

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