A Tensor Spectral Approach to Learning Mixed Membership Community Models

Abstract

Detecting hidden communities from observed interactions is a classical problem. Theoretical analysis of community detection has so far been mostly limited to models with non-overlapping communities such as the stochastic block model. In this paper, we provide guaranteed community detection for a family of probabilistic network models with overlapping communities, termed as the mixed membership Dirichlet model, first introduced in Airoldi et al. (2008). This model allows for nodes to have fractional memberships in multiple communities and assumes that the community memberships are drawn from a Dirichlet distribution. Moreover, it contains the stochastic block model as a special case. We propose a unified approach to learning communities in these models via a tensor spectral decomposition approach. Our estimator uses low-order moment tensor of the observed network consisting of 3-star counts. Our learning method is based on simple linear algebraic operations such as singular value decomposition and tensor power iterations. We provide guaranteed recovery of community memberships and model parameters, and present a careful finite sample analysis of our learning method. Additionally, our results match the best known scaling requirements for the special case of the (homogeneous) stochastic block model.

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Document Details

Document Type
Technical Report
Publication Date
Jan 01, 2013
Accession Number
ADA613297

Entities

People

  • Anima Anandkumar
  • Daniel Hsu
  • Rong Ge
  • Sham Kakade

Organizations

  • University of California, Irvine

Tags

Communities of Interest

  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Algorithms
  • Decomposition
  • Detection
  • Estimators
  • Information Processing
  • Information Science
  • Iterations
  • Learning
  • Machine Learning
  • Method Of Moments
  • Monte Carlo Method
  • Probabilistic Models
  • Probability
  • Random Variables
  • Social Networks
  • Statistical Algorithms
  • Statistical Analysis

Fields of Study

  • Computer science

Readers

  • Computational Modeling and Simulation
  • Graph Algorithms and Convex Optimization.
  • Statistical inference.