The Planted Spanning Tree Problem
Abstract
We study the problem of detecting and recovering a planted spanning tree Mn* hidden within a complete, randomly weighted graph Gn. Specifically, each edge e has a non-negative weight drawn independently from Pn if e ∈ Mn* and from Qn otherwise, where Pn P is fixed and Qn scales with n such that its density at the origin satisfies n∞ n Q'n(0)=1. We consider two representative cases: when Mn* is either a uniform spanning tree or a uniform Hamiltonian path. We analyze the recovery performance of the minimum spanning tree (MST) algorithm and derive a fixed-point equation that characterizes the asymptotic fraction of edges in Mn* successfully recovered by the MST as n ∞. Furthermore, we establish the asymptotic mean weight of the MST, extending Frieze's ζ(3) result to the planted model. Leveraging this result, we design an efficient test based on the MST weight and show that it can distinguish the planted model from the unplanted model with vanishing testing error as n ∞. Our analysis relies on an asymptotic characterization of the local structure of the planted model, employing the framework of local weak convergence.
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