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Quantum state reconstruction with biased distributions of quantum states

ORAL

Abstract

We consider the properties of a specific distribution of mixed quantum states of arbitrary dimension that can be biased towards a specific mean purity. In particular, we analyze mixtures of Haar-random pure states with Dirichlet-distributed coefficients. We analytically derive the concentration parameters required to match the mean purity of the Bures and Hilbert--Schmidt distributions in any dimension. Numerical simulations suggest that this value recovers the Hilbert--Schmidt distribution exactly, offering an alternative and intuitive physical interpretation for ensembles of Hilbert--Schmidt-distributed random quantum states. We then demonstrate how substituting these Dirichlet-weighted Haar mixtures in place of the Bures and Hilbert--Schmidt distributions results in measurable performance advantages in machine-learning-based quantum state tomography systems and Bayesian quantum state reconstruction. Finally, we experimentally characterize the distribution of quantum states generated by both a cloud-accessed IBM quantum computer and an in-house source of polarization-entangled photons. In each case, our method can more closely match the underlying distribution than either Bures or Hilbert--Schmidt distributed states for various experimental conditions.

Publication: Lohani, S., Lukens, J. M., Jones, D. E., Searles, T. A., Glasser, R. T., & Kirby, B. T. (2021). Improving application performance with biased distributions of quantum states. arXiv preprint arXiv:2107.07642.

Presenters

  • Sanjaya Lohani

    University of Illinois Chicago

Authors

  • Sanjaya Lohani

    University of Illinois Chicago

  • Joseph M Lukens

    Oak Ridge National Laboratory

  • Daniel E Jones

    US Army Research Laboratory

  • Thomas A Searles

    University of Illinois Chicago, University of Illinois at Chicago

  • Ryan T Glasser

    Tulane Univ

  • Brian T Kirby

    United States Army Research Laboratory, Adelphi, MD 20783, USA, US Army Research Laboratory