Statistical limits of correlation detection in trees
Luca Ganassali, Laurent Massouli\'e, Guilhem Semerjian

TL;DR
This paper establishes the fundamental limits of detecting correlation between two trees in a probabilistic model, revealing a phase transition at a specific correlation threshold and confirming the success conditions for a graph alignment method.
Contribution
It identifies the precise phase transition for correlation detection in trees under the Galton-Watson model and proves the effectiveness of the MPAlign method above this threshold.
Findings
No one-sided test exists for correlation parameter s ≤ √α.
Such a test exists for s > √α when the average degree λ is large.
The results confirm the conjecture about MPAlign's success in partial recovery for s > √α.
Abstract
In this paper we address the problem of testing whether two observed trees are sampled either independently or from a joint distribution under which they are correlated. This problem, which we refer to as correlation detection in trees, plays a key role in the study of graph alignment for two correlated random graphs. Motivated by graph alignment, we investigate the conditions of existence of one-sided tests, i.e. tests which have vanishing type I error and non-vanishing power in the limit of large tree depth. For the correlated Galton-Watson model with Poisson offspring of mean and correlation parameter , we identify a phase transition in the limit of large degrees at , where is Otter's constant. Namely, we prove that no such test exists for , and that such a test exists whenever $s >…
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Taxonomy
TopicsRandom Matrices and Applications · Markov Chains and Monte Carlo Methods · Stochastic processes and statistical mechanics
MethodsTest
