SIMPLE: Statistical Inference on Membership Profiles in Large Networks
Jianqing Fan, Yingying Fan, Xiao Han, Jinchi Lv

TL;DR
This paper introduces SIMPLE, a statistical inference method for assessing latent community memberships in large networks, providing rigorous tests with proven asymptotic distributions under complex models.
Contribution
The paper develops novel Hotelling-type tests for membership profile inference in degree-corrected mixed membership models, with explicit covariance estimation and asymptotic distribution results.
Findings
Tests accurately control size under null hypothesis
Method demonstrates high power in simulations
Effective in real network data applications
Abstract
Network data is prevalent in many contemporary big data applications in which a common interest is to unveil important latent links between different pairs of nodes. Yet a simple fundamental question of how to precisely quantify the statistical uncertainty associated with the identification of latent links still remains largely unexplored. In this paper, we propose the method of statistical inference on membership profiles in large networks (SIMPLE) in the setting of degree-corrected mixed membership model, where the null hypothesis assumes that the pair of nodes share the same profile of community memberships. In the simpler case of no degree heterogeneity, the model reduces to the mixed membership model for which an alternative more robust test is also proposed. Both tests are of the Hotelling-type statistics based on the rows of empirical eigenvectors or their ratios, whose…
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Taxonomy
TopicsComplex Network Analysis Techniques · Random Matrices and Applications · Opinion Dynamics and Social Influence
MethodsTest
