English

Regularising data for practical randomness generation

Quantum Physics 2019-05-07 v3

Abstract

Non-local correlations that obey the no-signalling principle contain intrinsic randomness. In particular, for a specific Bell experiment, one can derive relations between the amount of randomness produced, as quantified by the min-entropy of the output data, and its associated violation of a Bell inequality. In practice, due to finite sampling, certifying randomness requires the development of statistical tools to lower-bound the min-entropy of the data as a function of the estimated Bell violation. The quality of such bounds relies on the choice of certificate, i.e., the Bell inequality whose violation is estimated. In this work, we propose a method for choosing efficiently such a certificate. It requires sacrificing a part of the output data in order to estimate the underlying correlations. Regularising this estimate then allows one to find a Bell inequality that is well suited for certifying practical randomness from these specific correlations. We then study the effects of various parameters on the obtained min-entropy bound and explain how to tune them in a favourable way. Lastly, we carry out several numerical simulations of a Bell experiment to show the efficiency of our method: we nearly always obtain higher min-entropy rates than when we use a pre-established Bell inequality, namely the Clauser-Horne-Shimony-Holt inequality.

Keywords

Cite

@article{arxiv.1802.04703,
  title  = {Regularising data for practical randomness generation},
  author = {Boris Bourdoncle and Pei-Sheng Lin and Denis Rosset and Antonio Acín and Yeong-Cherng Liang},
  journal= {arXiv preprint arXiv:1802.04703},
  year   = {2019}
}

Comments

12 pages + 6 figures. Comments welcome