DocumentCode
60951
Title
Context-Aware Hypergraph Construction for Robust Spectral Clustering
Author
Xi Li ; Weiming Hu ; Chunhua Shen ; Dick, Anthony ; Zhongfei Zhang
Author_Institution
Nat. Lab. of Pattern Recognition, Inst. of Autom., Beijing, China
Volume
26
Issue
10
fYear
2014
fDate
Oct. 2014
Firstpage
2588
Lastpage
2597
Abstract
Spectral clustering is a powerful tool for unsupervised data analysis. In this paper, we propose a context-aware hypergraph similarity measure (CAHSM), which leads to robust spectral clustering in the case of noisy data. We construct three types of hypergraphs-the pairwise hypergraph, the k-nearest-neighbor (kNN) hypergraph, and the high-order over-clustering hypergraph. The pairwise hypergraph captures the pairwise similarity of data points; the kNNhypergraph captures the neighborhood of each point; and the clustering hypergraph encodes high-order contexts within the dataset. By combining the affinity information from these three hypergraphs, the CAHSM algorithm is able to explore the intrinsic topological information of the dataset. Therefore, data clustering using CAHSM tends to be more robust. Considering the intra-cluster compactness and the inter-cluster separability of vertices, we further design a discriminative hypergraph partitioning criterion (DHPC). Using both CAHSM and DHPC, a robust spectral clustering algorithm is developed. Theoretical analysis and experimental evaluation demonstrate the effectiveness and robustness of the proposed algorithm.
Keywords
data analysis; graph theory; pattern clustering; CAHSM algorithm; DHPC; affinity information; context-aware hypergraph construction; context-aware hypergraph similarity measure; data clustering; data point pairwise similarity; discriminative hypergraph partitioning criterion; high-order contexts; high-order over-clustering hypergraph; inter-cluster vertices separability; intra-cluster compactness; intrinsic topological information; k-nearest-neighbor hypergraph; kNN hypergraph; pairwise hypergraph; robust spectral clustering algorithm; unsupervised data analysis; Clustering algorithms; Communities; Context; Optimization; Partitioning algorithms; Robustness; Vectors; Graph-theoretic methods; Hypergraph construction; Machine learning; Spectral clustering; graph partitioning; similarity measure; spectral clustering;
fLanguage
English
Journal_Title
Knowledge and Data Engineering, IEEE Transactions on
Publisher
ieee
ISSN
1041-4347
Type
jour
DOI
10.1109/TKDE.2013.126
Filename
6570719
Link To Document