Consistent recovery threshold of hidden nearest neighbor graphs
Jian Ding, Yihong Wu, Jiaming Xu, and Dana Yang

TL;DR
This paper analyzes the conditions under which a hidden nearest neighbor graph can be accurately recovered in large complete graphs, providing thresholds for exact and almost exact recovery using maximum likelihood estimation.
Contribution
It establishes sharp recovery thresholds for hidden $2k$-nearest neighbor graphs, connecting them to divergence measures and proving their optimality under mild assumptions.
Findings
Maximum likelihood achieves exact recovery under certain divergence conditions.
Exact recovery is impossible below specific divergence thresholds.
Conditions are shown to be information-theoretically necessary.
Abstract
Motivated by applications such as discovering strong ties in social networks and assembling genome subsequences in biology, we study the problem of recovering a hidden -nearest neighbor (NN) graph in an -vertex complete graph, whose edge weights are independent and distributed according to for edges in the hidden -NN graph and otherwise. The special case of Bernoulli distributions corresponds to a variant of the Watts-Strogatz small-world graph. We focus on two types of asymptotic recovery guarantees as : (1) exact recovery: all edges are classified correctly with probability tending to one; (2) almost exact recovery: the expected number of misclassified edges is . We show that the maximum likelihood estimator achieves (1) exact recovery for if ; (2) almost exact recovery for $ 1 \le k…
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Taxonomy
TopicsBayesian Methods and Mixture Models · Bayesian Modeling and Causal Inference · Statistical Methods and Inference
