Repository logo
 

Hermitian matrices for clustering directed graphs: insights and applications

Accepted version
Peer-reviewed

Type

Conference Object

Change log

Authors

Li, Huan 
Cucuringu, Mihai 
Sun, He 
Zanetti, Luca 

Abstract

Graph clustering is a basic technique in machine learning, and has widespread applications in different domains. While spectral techniques have been successfully applied for clustering undirected graphs, the performance of spectral clustering algorithms for directed graphs (digraphs) is not in general satisfactory: these algorithms usually require symmetrising the matrix representing a digraph, and typical objective functions for undirected graph clustering do not capture cluster-structures in which the information given by the direction of the edges is crucial. To overcome these downsides, we propose a spectral clustering algorithm based on a complex-valued matrix representation of digraphs. We analyse its theoretical performance on a Stochastic Block Model for digraphs in which the cluster-structure is given not only by variations in edge densities, but also by the direction of the edges. The significance of our work is highlighted on a data set pertaining to internal migration in the United States: while previous spectral clustering algorithms for digraphs can only reveal that people are more likely to move between counties that are geographically close, our approach is able to cluster together counties with a similar socio-economical profile even when they are geographically distant, and illustrates how people tend to move from rural to more urbanised areas.

Description

Keywords

Journal Title

Conference Name

AISTATS

Journal ISSN

Volume Title

Publisher

Rights

All rights reserved
Sponsorship
European Research Council (679660)