Efficient Eigen-updating for Spectral Graph Clustering
Charanpal Dhanjal (LIP6), Romaric Gaudel (LIFL), St\'ephan, Cl\'emen\c{c}on (LTCI)

TL;DR
This paper introduces a new incremental eigenvalue approach for spectral graph clustering, enabling efficient analysis of evolving networks with theoretical guarantees and demonstrated effectiveness on various real-world datasets.
Contribution
It proposes the Incremental Approximate Spectral Clustering (IASC) algorithm, a novel, efficient method for dynamic graph clustering with theoretical bounds on eigenvector approximation quality.
Findings
IASC effectively clusters evolving networks in synthetic and real datasets.
Theoretical bounds validate the approximation quality of eigenvectors.
Demonstrated applications include HIV epidemic, citation, and e-commerce networks.
Abstract
Partitioning a graph into groups of vertices such that those within each group are more densely connected than vertices assigned to different groups, known as graph clustering, is often used to gain insight into the organisation of large scale networks and for visualisation purposes. Whereas a large number of dedicated techniques have been recently proposed for static graphs, the design of on-line graph clustering methods tailored for evolving networks is a challenging problem, and much less documented in the literature. Motivated by the broad variety of applications concerned, ranging from the study of biological networks to the analysis of networks of scientific references through the exploration of communications networks such as the World Wide Web, it is the main purpose of this paper to introduce a novel, computationally efficient, approach to graph clustering in the evolutionary…
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Taxonomy
TopicsComplex Network Analysis Techniques · Bioinformatics and Genomic Networks · Gene expression and cancer classification
MethodsSpectral Clustering
