Daniele Imparato

  1. Zero Variance Markov Chain Monte Carlo for Bayesian Estimators.

    Authors: Antonietta Mira, Reza Solgi, Daniele Imparato
    Subjects: Computation
    Abstract

    A general purpose variance reduction technique for Markov chain Monte Carlo
    estimators based on the zero-variance principle introduced in the physics
    literature by Assaraf and Caffarel (1999, 2003), is proposed. Conditions for
    unbiasedness of the zero-variance estimator are derived. A central limit
    theorem is also proved under regularity conditions. The potential of the new
    idea is illustrated with real applications to Bayesian inference for probit,
    logit and GARCH models.

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