A multi-dimensional quantum estimation and model learning framework based on variational Bayesian inference
Federico Belliardo, Erik M. Gauger, Tim H. Taminiau, Yoann Altmann, and Cristian Bonato

TL;DR
This paper introduces a scalable variational Bayesian inference framework for rapid multi-parameter quantum system identification, capable of model selection and applied to nanoscale nuclear magnetic resonance.
Contribution
It presents a novel, fast Bayesian algorithm for joint model selection and parameter estimation in high-dimensional quantum systems, outperforming traditional sampling methods.
Findings
Successfully identified multiple nuclear spins with a single electron spin sensor.
Estimated dozens of parameters within minutes on simulated and experimental data.
Effectively distinguished between models with different numbers of parameters.
Abstract
The advancement and scaling of quantum technology has made the learning and identification of quantum systems and devices in highly-multidimensional parameter spaces a pressing task for a variety of applications. In many cases, the integration of real-time feedback control and adaptive choice of measurement settings places strict demands on the speed of this task. Here we present a joint model selection and parameter estimation algorithm that is fast and operable on a large number of model parameters. The algorithm is based on variational Bayesian inference (VBI), which approximates the target posterior distribution by optimizing a tractable family of distributions, making it more scalable than exact inference methods relying on sampling and that generally suffer from high variance and computational cost in high-dimensional spaces. We show how a regularizing prior can be used to select…
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