On the impossibility of detecting a late change-point in the preferential attachment random graph model

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Abstract

We consider the problem of late change-point detection under the preferential attachment random graph model with time dependent attachment function. This can be formulated as a hypothesis testing problem where the null hypothesis corresponds to a preferential attachment model with a constant affine attachment parameter ς0 and the alternative corresponds to a preferential attachment model where the affine attachment parameter changes from ς0 to ς1 at a time Τn = n − Δn where 0 ≤ Δn ≤ n and n is the size of the graph. It was conjectured in (Bet et al. (2023)) that when observing only the unlabeled graph, detection of the change is not possible for Δn = n(n1/2). In this work, we make a step towards proving the conjecture by proving the impossibility of detecting the change when Δn = n(n1/3). We also study change-point detection in the case where the labeled graph is observed and show that change-point detection is possible if and only if Δn →∞, thereby exhibiting a strong difference between the two settings.

Original languageEnglish
Pages (from-to)96-126
Number of pages31
JournalBernoulli
Volume32
Issue number1
DOIs
Publication statusPublished - 1 Feb 2026
Externally publishedYes

Keywords

  • Change-point detection
  • contiguity
  • preferential attachment
  • random graphs

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