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Optimal Estimation of Parameters in Degree Corrected Mixed Membership Models

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Abstract

With the rise of big data, networks have pervaded many aspects of our daily lives, with applications ranging from the social to natural sciences. Understanding the latent structure of the network is thus an important question. In this paper, we model the network using a Degree-Corrected Mixed Membership (DCMM) model, in which every node ii has an affinity parameter θi\theta_i, measuring the degree of connectivity, and an intrinsic membership probability vector πi=(π1,πK)\pi_i = (\pi_1, \cdots \pi_K), measuring its belonging to one of KK communities, and a probability matrix PP that describes the average connectivity between two communities. Our central question is to determine the optimal estimation rates for the probability matrix and degree parameters PP and Θ\Theta of the DCMM, an often overlooked question in the literature. By providing new lower bounds, we show that simple extensions of existing estimators in the literature indeed achieve the optimal rate. Simulations lend further support to our theoretical results.

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