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Rates of Convergence of Spectral Methods for Graphon Estimation

10 September 2017
Jiaming Xu
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Abstract

This paper studies the problem of estimating the grahpon model - the underlying generating mechanism of a network. Graphon estimation arises in many applications such as predicting missing links in networks and learning user preferences in recommender systems. The graphon model deals with a random graph of nnn vertices such that each pair of two vertices iii and jjj are connected independently with probability ρ×f(xi,xj)\rho \times f(x_i,x_j)ρ×f(xi​,xj​), where xix_ixi​ is the unknown ddd-dimensional label of vertex iii, fff is an unknown symmetric function, and ρ\rhoρ is a scaling parameter characterizing the graph sparsity. Recent studies have identified the minimax error rate of estimating the graphon from a single realization of the random graph. However, there exists a wide gap between the known error rates of computationally efficient estimation procedures and the minimax optimal error rate. Here we analyze a spectral method, namely universal singular value thresholding (USVT) algorithm, in the relatively sparse regime with the average vertex degree nρ=Ω(log⁡n)n\rho=\Omega(\log n)nρ=Ω(logn). When fff belongs to H\"{o}lder or Sobolev space with smoothness index α\alphaα, we show the error rate of USVT is at most (nρ)−2α/(2α+d)(n\rho)^{ -2 \alpha / (2\alpha+d)}(nρ)−2α/(2α+d), approaching the minimax optimal error rate log⁡(nρ)/(nρ)\log (n\rho)/(n\rho)log(nρ)/(nρ) for d=1d=1d=1 as α\alphaα increases. Furthermore, when fff is analytic, we show the error rate of USVT is at most log⁡d(nρ)/(nρ)\log^d (n\rho)/(n\rho)logd(nρ)/(nρ). In the special case of stochastic block model with kkk blocks, the error rate of USVT is at most k/(nρ)k/(n\rho)k/(nρ), which is larger than the minimax optimal error rate by at most a multiplicative factor k/log⁡kk/\log kk/logk. This coincides with the computational gap observed for community detection. A key step of our analysis is to derive the eigenvalue decaying rate of the edge probability matrix using piecewise polynomial approximations of the graphon function fff.

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