Authors
Tamal K Dey, Pan Peng, Alfred Rossi, Anastasios Sidiropoulos
Publication date
2019/1/1
Journal
Computational Geometry
Volume
76
Pages
19-32
Publisher
Elsevier
Description
A popular graph clustering method is to consider the embedding of an input graph into R k induced by the first k eigenvectors of its Laplacian, and to partition the graph via geometric manipulations on the resulting metric space. Despite the practical success of this methodology, there is limited understanding of several heuristics that follow this framework. We provide theoretical justification for one such natural and computationally efficient variant. Our result can be summarized as follows. A partition of a graph is called strong if each cluster has small external conductance, and large internal conductance. We present a simple greedy spectral clustering algorithm which returns a partition that is provably close to a suitably strong partition, provided that such a partition exists. A recent result shows that strong partitions exist for graphs with a sufficiently large spectral gap between the k-th and (k+ 1)-st eigenvalues. Taking …
Total citations
2020202120222023202421412
Scholar articles
TK Dey, P Peng, A Rossi, A Sidiropoulos - Computational Geometry, 2019