Rates of Convergence of Spectral Methods for Graphon Estimation

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 vertices such that each pair of two vertices and are connected independently with probability , where is the unknown -dimensional label of vertex , is an unknown symmetric function, and 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 . When belongs to H\"{o}lder or Sobolev space with smoothness index , we show the error rate of USVT is at most , approaching the minimax optimal error rate for as increases. Furthermore, when is analytic, we show the error rate of USVT is at most . In the special case of stochastic block model with blocks, the error rate of USVT is at most , which is larger than the minimax optimal error rate by at most a multiplicative factor . 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 .
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