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Consistency of Spectral Seriation

Abstract

Consider a random graph GG of size NN constructed according to a \textit{graphon} w:[0,1]2[0,1]w \, : \, [0,1]^{2} \mapsto [0,1] as follows. First embed NN vertices V={v1,v2,,vN}V = \{v_1, v_2, \ldots, v_N\} into the interval [0,1][0,1], then for each i<ji < j add an edge between vi,vjv_{i}, v_{j} with probability w(vi,vj)w(v_{i}, v_{j}). Given only the adjacency matrix of the graph, we might expect to be able to approximately reconstruct the permutation σ\sigma for which vσ(1)<<vσ(N)v_{\sigma(1)} < \ldots < v_{\sigma(N)} if ww satisfies the following \textit{linear embedding} property introduced in [Janssen 2019]: for each xx, w(x,y)w(x,y) decreases as yy moves away from xx. For a large and non-parametric family of graphons, we show that (i) the popular spectral seriation algorithm [Atkins 1998] provides a consistent estimator σ^\hat{\sigma} of σ\sigma, and (ii) a small amount of post-processing results in an estimate σ~\tilde{\sigma} that converges to σ\sigma at a nearly-optimal rate, both as NN \rightarrow \infty.

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