Stochastic metrology and the empirical distribution

ORAL

Abstract

We study the problem of parameter estimation in time series stemming from general stochastic processes, where the outcomes may exhibit arbitrary temporal correlations. In particular, we address the question of how much Fisher information is lost if the stochastic process is compressed into a single histogram, known as the empirical distribution. As we show, the answer is nontrivial due to the correlations between outcomes. We derive practical formulas for the resulting Fisher information for various scenarios, from generic stationary processes to discrete-time Markov chains to continuous-time classical master equations. The results are illustrated with several examples.

Publication: Smiga, Radaelli, Binder, Landi (2023) "Stochastic metrology and the empirical distribution." Phys. Rev. Research 5, 033150 [arXiv:2305.16480]

Presenters

  • Joseph A Smiga

    • University of Rochester

Authors

  • Joseph A Smiga

    • University of Rochester
  • Marco Radaelli

    • School of Physics, Trinity College Dublin
  • Felix C Binder

    • School of Physics, Trinity College Dublin
  • Gabriel T Landi

    • University of Rochester