Title of article
GANC: Greedy agglomerative normalized cut for graph clustering
Author/Authors
Tabatabaei، نويسنده , , Seyed Salim and Coates، نويسنده , , Mark and Rabbat، نويسنده , , Michael، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2012
Pages
13
From page
831
To page
843
Abstract
This paper describes a graph clustering algorithm that aims to minimize the normalized cut criterion and has a model order selection procedure. The performance of the proposed algorithm is comparable to spectral approaches in terms of minimizing normalized cut. However unlike spectral approaches, the proposed algorithm scales to graphs with millions of nodes and edges. The algorithm consists of three components that are processed sequentially: a greedy agglomerative hierarchical clustering procedure, model order selection, and a local refinement.
graph of n nodes and O(n) edges, the computational complexity of the algorithm is O ( n log 2 n ) , a major improvement over the O ( n 3 ) complexity of spectral methods. Experiments are performed on real and synthetic networks to demonstrate the scalability of the proposed approach, the effectiveness of the model order selection procedure, and the performance of the proposed algorithm in terms of minimizing the normalized cut metric.
Keywords
Graph clustering , Large scale graphs , Model order selection , Normalized cut
Journal title
PATTERN RECOGNITION
Serial Year
2012
Journal title
PATTERN RECOGNITION
Record number
1734339
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