Title :
Subspace Similarity-Based Algorithm for Combine Multiple Clustering
Author :
Sen Xu ; Xianfeng Li ; Rong Chen ; Shuang Wu ; Jun Ni
Author_Institution :
Sch. of Inf. Eng., Yancheng Inst. of Technol., Yancheng, China
Abstract :
Ensemble learning methods train multiple classifiers before classification combination. The methods have been proved to be very effective in supervised machine learning. In this paper, we present an approach to solve ensemble problem of clustering. Beginning with pursuing a "best" subspace, we formulate the problem as an optimization of square sum of Euclidean distances between the standard orthogonal basis of the target subspace and the given subspace sets. We then reach the status that the low dimensional embedding of instances and hyper-edges are simultaneously attained. Finally, we use the K-mean algorithm in optimization principle to cluster instances according to their coordinates in the embedding space. This way, we obtain stable clustering results. We apply our ensemble algorithm on several well-recognized datasets. After comparing our experimental results with others, can conclude that our algorithm outperforms other algorithms in terms of the normalized mutual information.
Keywords :
learning (artificial intelligence); optimisation; pattern classification; pattern clustering; Euclidean distance; K-mean algorithm; ensemble learning method; hyper-edges; low dimensional embedding; multiple classifier; multiple clustering; optimization principle; orthogonal basis; subspace similarity-based algorithm; supervised machine learning; Internet; cluster ensembling; clustering analysis; machine learning; normalization mutual information;
Conference_Titel :
Internet Computing for Engineering and Science (ICICSE), 2013 Seventh International Conference on
Conference_Location :
Shanghai
DOI :
10.1109/ICICSE.2013.22