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A model-based approach to attributed graph clustering
- Source :
- SIGMOD Conference
- Publication Year :
- 2012
- Publisher :
- ACM, 2012.
-
Abstract
- Graph clustering, also known as community detection, is a long-standing problem in data mining. However, with the proliferation of rich attribute information available for objects in real-world graphs, how to leverage structural and attribute information for clustering attributed graphs becomes a new challenge. Most existing works take a distance-based approach. They proposed various distance measures to combine structural and attribute information. In this paper, we consider an alternative view and propose a model-based approach to attributed graph clustering. We develop a Bayesian probabilistic model for attributed graphs. The model provides a principled and natural framework for capturing both structural and attribute aspects of a graph, while avoiding the artificial design of a distance measure. Clustering with the proposed model can be transformed into a probabilistic inference problem, for which we devise an efficient variational algorithm. Experimental results on large real-world datasets demonstrate that our method significantly outperforms the state-of-art distance-based attributed graph clustering method.
- Subjects :
- Engineering::Computer science and engineering [DRNTU]
Clustering high-dimensional data
Fuzzy clustering
Brown clustering
Computer science
Null model
Correlation clustering
Constrained clustering
Conceptual clustering
Community structure
Statistical model
computer.software_genre
Graph
Distance measures
Hierarchical clustering
Data stream clustering
CURE data clustering algorithm
Consensus clustering
Canopy clustering algorithm
Affinity propagation
Data mining
Cluster analysis
computer
Clustering coefficient
Subjects
Details
- Database :
- OpenAIRE
- Journal :
- Proceedings of the 2012 ACM SIGMOD International Conference on Management of Data
- Accession number :
- edsair.doi.dedup.....1fb154e20dbd05345eaf6c22db56e6ec
- Full Text :
- https://doi.org/10.1145/2213836.2213894