Eigenvector Computation and Community Detection in Asynchronous Gossip Models
Abstract
We give a simple distributed algorithm for computing adjacency matrix eigenvectors for the communication graph in an asynchronous gossip model. We show how to use this algorithm to give state-of-the-art asynchronous community detection algorithms when the communication graph is drawn from the well-studied stochastic block model. Our methods also apply to a natural alternative model of randomized communication, where nodes within a community communicate more frequently than nodes in different communities. Our analysis simplifies and generalizes prior work by forging a connection between asynchronous eigenvector computation and Oja's algorithm for streaming principal component analysis. We hope that our work serves as a starting point for building further connections between the analysis of stochastic iterative methods, like Oja's algorithm, and work on asynchronous and gossip-type algorithms for distributed computation.
Keywords
Cite
@article{arxiv.1804.08548,
title = {Eigenvector Computation and Community Detection in Asynchronous Gossip Models},
author = {Frederik Mallmann-Trenn and Cameron Musco and Christopher Musco},
journal= {arXiv preprint arXiv:1804.08548},
year = {2018}
}