Overlapping Community Detection in Networks via Sparse Spectral Decomposition Academic Article uri icon

abstract

  • We consider the problem of estimating overlapping community memberships in a network, where each node can belong to multiple communities. More than a few communities per node are difficult to both estimate and interpret, so we focus on sparse node membership vectors. Our algorithm is based on sparse principal subspace estimation with iterative thresholding. The method is computationally efficient, with computational cost equivalent to estimating the leading eigenvectors of the adjacency matrix, and does not require an additional clustering step, unlike spectral clustering methods. We show that a fixed point of the algorithm corresponds to correct node memberships under a version of the stochastic block model. The methods are evaluated empirically on simulated and real-world networks, showing good statistical performance and computational efficiency.

published proceedings

  • SANKHYA-SERIES A-MATHEMATICAL STATISTICS AND PROBABILITY

author list (cited authors)

  • Arroyo, J., & Levina, E.

citation count

  • 2

complete list of authors

  • Arroyo, Jesus||Levina, Elizaveta

publication date

  • June 2022