On conditioning a self-similar growth-fragmentation by its intrinsic area

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Abstract

The genealogical structure of self-similar growth-fragmentations can be described in terms of a branching random walk. The so-called intrinsic area A arises in this setting as the terminal value of a remarkable additive martingale. Motivated by connections with some models of random planar geometry, the purpose of this work is to investigate the effect of conditioning a self-similar growthfragmentation on its intrinsic area. The distribution of A is a fixed point of a useful smoothing transform which enables us to establish the existence of a regular density a and to determine the asymptotic behavior of a(r) as r→∞(this can be seen as a local version of Kesten-Grincevicius-Goldie theorem's for random affine fixed point equations in a particular setting). In turn, this yields a family of martingales from which the formal conditioning on A = r can be realized by probability tilting. We point at a limit theorem for the conditional distribution given A = r as r→∞, and also observe that such conditioning still makes sense under the so-called canonical measure for which the growth-fragmentation starts from 0.

Original languageEnglish
Pages (from-to)1136-1156
Number of pages21
JournalAnnales de l'institut Henri Poincare (B) Probability and Statistics
Volume57
Issue number2
DOIs
Publication statusPublished - 1 May 2021

Keywords

  • Branching process
  • Growth-fragmentation
  • Intrinsic martingale
  • Self-similarity
  • Smoothing transform

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