English

Experimental adaptive Bayesian estimation of multiple phases with limited data

Quantum Physics 2020-02-05 v1

Abstract

Achieving ultimate bounds in estimation processes is the main objective of quantum metrology. In this context, several problems require measurement of multiple parameters by employing only a limited amount of resources. To this end, adaptive protocols, exploiting additional control parameters, provide a tool to optimize the performance of a quantum sensor to work in such limited data regime. Finding the optimal strategies to tune the control parameters during the estimation process is a non-trivial problem, and machine learning techniques are a natural solution to address such task. Here, we investigate and implement experimentally for the first time an adaptive Bayesian multiparameter estimation technique tailored to reach optimal performances with very limited data. We employ a compact and flexible integrated photonic circuit, fabricated by femtosecond laser writing, which allows to implement different strategies with high degree of control. The obtained results show that adaptive strategies can become a viable approach for realistic sensors working with a limited amount of resources.

Keywords

Cite

@article{arxiv.2002.01232,
  title  = {Experimental adaptive Bayesian estimation of multiple phases with limited data},
  author = {Mauro Valeri and Emanuele Polino and Davide Poderini and Ilaria Gianani and Giacomo Corrielli and Andrea Crespi and Roberto Osellame and Nicolò Spagnolo and Fabio Sciarrino},
  journal= {arXiv preprint arXiv:2002.01232},
  year   = {2020}
}

Comments

10+4 pages, 6+2 figures

R2 v1 2026-06-23T13:30:36.084Z