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

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 and the alternative corresponds to a preferential attachment model where the affine attachment parameter changes from to at a time where and is the size of the graph. It was conjectured in Bet et al. that when observing only the unlabeled graph, detection of the change is not possible for . In this work, we make a step towards proving the conjecture by proving the impossibility of detecting the change when . 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 , thereby exhibiting a strong difference between the two settings.
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