Optimal Network Membership Estimation Under Severe Degree Heterogeneity

04/26/2022
by   Zheng Tracy Ke, et al.
0

Real networks often have severe degree heterogeneity. We are interested in studying the effect of degree heterogeneity on estimation of the underlying community structure. We consider the degree-corrected mixed membership model (DCMM) for a symmetric network with n nodes and K communities, where each node i has a degree parameter θ_i and a mixed membership vector π_i. The level of degree heterogeneity is captured by F_n(·) – the empirical distribution associated with n (scaled) degree parameters. We first show that the optimal rate of convergence for the ℓ^1-loss of estimating π_i's depends on an integral with respect to F_n(·). We call a method optimally adaptive to degree heterogeneity (in short, optimally adaptive) if it attains the optimal rate for arbitrary F_n(·). Unfortunately, none of the existing methods satisfy this requirement. We propose a new spectral method that is optimally adaptive, the core idea behind which is using a pre-PCA normalization to yield the optimal signal-to-noise ratio simultaneously at all entries of each leading empirical eigenvector. As one technical contribution, we derive a new row-wise large-deviation bound for eigenvectors of the regularized graph Laplacian.

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