Title :
Spectral clustering ensemble via compositional data clustering
Author :
Xu Yuanchun ; Jia Jianhua
Author_Institution :
Sch. of Inf. Eng., Jingdezhen Ceramic Inst., Jingdezhen, China
Abstract :
An unsupervised learning algorithm for spectral clustering (SC) ensemble is proposed in this paper. A new consensus function is designed to combine multiple spectral clusterings. The proposed algorithm is suitable to large-scale data (e.g., texture image) and it can solve the sensitivity of scaling parameter of spectral clustering. The random scaling parameter and Nyström approximation are used to generate the individuals of SC for ensemble learning and the generated labels are regarded as the new features for each sample. Hungarian algorithm is used to realign the labels and then a compositional data vector can be found by computing the ratio of each label for data points. The compositional data vectors are mapped into another space via logcontrast transform to solve the ill-posed problem of compositional data and final ensemble result can be achieved by clustering the mapped data. Experimental results on UCI data and texture images show that, by comparison of previous approaches based on hypergraph and mixture model, the proposed algorithm takes the least computation time with the almost identical accuracy, and it avoids the selection of accurate scaling parameter in spectral clustering.
Keywords :
geophysical image processing; graph theory; image texture; learning (artificial intelligence); pattern clustering; transforms; Hungarian algorithm; Nyström approximation; UCI data; compositional data clustering; compositional data vector; consensus function; ensemble learning; hypergraph; logcontrast transform; mixture model; random scaling parameter sensitivity; spectral clustering ensemble; texture images; unsupervised learning algorithm; Algorithm design and analysis; Approximation methods; Clustering algorithms; Computational efficiency; Image segmentation; Partitioning algorithms; Transforms; Hungarian algorithm; Nyström approximation; compositional data; ensemble learning; spectral clustering;
Conference_Titel :
Fuzzy Systems and Knowledge Discovery (FSKD), 2011 Eighth International Conference on
Conference_Location :
Shanghai
Print_ISBN :
978-1-61284-180-9
DOI :
10.1109/FSKD.2011.6019693