Litcius/Paper detail

Hierarchical Community Detection by Recursive Partitioning

Tianxi Li, Lihua Lei, Sharmodeep Bhattacharyya, Koen Van Den Berge, Purnamrita Sarkar, Peter J. Bickel, Elizaveta Levina

2020Journal of the American Statistical Association82 citationsDOI

Abstract

The problem of community detection in networks is usually formulated as finding a single partition of the network into some “correct” number of communities. We argue that it is more interpretable and in some regimes more accurate to construct a hierarchical tree of communities instead. This can be done with a simple top-down recursive partitioning algorithm, starting with a single community and separating the nodes into two communities by spectral clustering repeatedly, until a stopping rule suggests there are no further communities. This class of algorithms is model-free, computationally efficient, and requires no tuning other than selecting a stopping rule. We show that there are regimes where this approach outperforms K-way spectral clustering, and propose a natural framework for analyzing the algorithm’s theoretical performance, the binary tree stochastic block model. Under this model, we prove that the algorithm correctly recovers the entire community tree under relatively mild assumptions. We apply the algorithm to a gene network based on gene co-occurrence in 1580 research papers on anemia, and identify six clusters of genes in a meaningful hierarchy. We also illustrate the algorithm on a dataset of statistics papers. Supplementary materials for this article are available online.

Topics & Concepts

Computer sciencePartition (number theory)Stochastic block modelCluster analysisTree (set theory)HierarchyRecursive partitioningClass (philosophy)Spectral clusteringBlock (permutation group theory)Data miningAlgorithmTheoretical computer scienceArtificial intelligenceMachine learningMathematicsCombinatoricsEconomicsGeometryMarket economyMathematical analysisComplex Network Analysis TechniquesBioinformatics and Genomic NetworksAdvanced Graph Neural Networks