Noise-mitigated randomized measurements and self-calibrating shadow estimation
E. Onorati, J. Kitzinger, J. Helsen, M. Ioannou, A. H. Werner, I., Roth, J. Eisert

TL;DR
This paper introduces a noise-mitigated randomized measurement method that enhances shadow estimation robustness in quantum systems, allowing simultaneous noise characterization and property estimation.
Contribution
It presents a novel error mitigation technique integrated with shadow estimation, supported by Fourier-transform-based analysis and rigorous performance guarantees.
Findings
Error mitigation improves shadow estimation accuracy under noise.
The method enables noise diagnostics from randomized benchmarking data.
Numerical simulations validate the approach's effectiveness.
Abstract
Randomized measurements are increasingly appreciated as powerful tools to estimate properties of quantum systems, e.g., in the characterization of hybrid classical-quantum computation. On many platforms they constitute natively accessible measurements, serving as the building block of prominent schemes like shadow estimation. In the real world, however, the implementation of the random gates at the core of these schemes is susceptible to various sources of noise and imperfections, strongly limiting the applicability of protocols. To attenuate the impact of this shortcoming, in this work we introduce an error-mitigated method of randomized measurements, giving rise to a robust shadow estimation procedure. On the practical side, we show that error mitigation and shadow estimation can be carried out using the same session of quantum experiments, hence ensuring that we can address and…
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Taxonomy
TopicsRemote Sensing and LiDAR Applications · Target Tracking and Data Fusion in Sensor Networks · Automated Road and Building Extraction
