Central Limit Theorem for Kernel Estimator of Invariant Density in Bifurcating Markov Chains Models

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Abstract

Bifurcating Markov chains are Markov chains indexed by a full binary tree representing the evolution of a trait along a population where each individual has two children. Motivated by the functional estimation of the density of the invariant probability measure which appears as the asymptotic distribution of the trait, we prove the consistency and the Gaussian fluctuations for a kernel estimator of this density based on late generations. In this setting, it is interesting to note that the distinction of the three regimes on the ergodic rate identified in a previous work (for fluctuations of average over large generations) disappears. This result is a first step to go beyond the threshold condition on the ergodic rate given in previous statistical papers on functional estimation.

Original languageEnglish
Pages (from-to)1591-1625
Number of pages35
JournalJournal of Theoretical Probability
Volume36
Issue number3
DOIs
Publication statusPublished - 1 Sept 2023

Keywords

  • Bifurcating Markov chains
  • Bifurcating autoregressive process
  • Binary trees
  • Density estimation
  • Fluctuations for trees indexed Markov chains
  • Kernel estimator

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