English

Community Detection with and without Prior Information

Physics and Society 2010-10-06 v2 Statistical Mechanics Computers and Society Data Analysis, Statistics and Probability Quantitative Methods

Abstract

We study the problem of graph partitioning, or clustering, in sparse networks with prior information about the clusters. Specifically, we assume that for a fraction ρ\rho of the nodes their true cluster assignments are known in advance. This can be understood as a semi--supervised version of clustering, in contrast to unsupervised clustering where the only available information is the graph structure. In the unsupervised case, it is known that there is a threshold of the inter--cluster connectivity beyond which clusters cannot be detected. Here we study the impact of the prior information on the detection threshold, and show that even minute [but generic] values of ρ>0\rho>0 shift the threshold downwards to its lowest possible value. For weighted graphs we show that a small semi--supervising can be used for a non-trivial definition of communities.

Keywords

Cite

@article{arxiv.0907.4803,
  title  = {Community Detection with and without Prior Information},
  author = {Armen E. Allahverdyan and Greg Ver Steeg and Aram Galstyan},
  journal= {arXiv preprint arXiv:0907.4803},
  year   = {2010}
}

Comments

6 pages, 2 figures

R2 v1 2026-06-21T13:29:45.594Z