Multi-clustering, which tries to find multiple independent ways to partition a data set into groups, has enjoyed many applications, such as customer relationship management, bioinformatics and healthcare informatics. This paper addresses two fundamental questions in multi-clustering: How to model quality of clusterings and how to find multiple stable clusterings (MSC). We introduce to multi-clustering the notion of clustering stability based on Laplacian eigengap, which was originally used by the regularized spectral learning method for similarity matrix learning. We mathematically prove that the larger the eigengap, the more stable the clustering. Furthermore, we propose a novel multi-clustering method MSC. An advantage of our method compa...
Multiview data clustering attracts more attention than their single-view counterparts due to the fac...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
Typically clustering algorithms provide clustering solutions with prespecified number of clusters. T...
Multi-clustering, which tries to find multiple independent ways to partition a data set into groups,...
A popular method for selecting the number of clusters is based on stability arguments: one chooses t...
Stability is a common tool to verify the validity of sample based algorithms. In clustering it is wi...
Stability is a common tool to verify the validity of sample based algorithms. In clustering it is wi...
Subspace clustering is to find underlying low-dimensional subspaces and cluster the data points corr...
Multiple clustering aims at discovering diverse ways of organizing data into clusters. Despite the p...
A popular method for selecting the number of clusters is based on sta-bility arguments: one chooses ...
Clustering has been widely used to identify possible structures in data and help users to understand...
Data mining involves searching for certain patterns and facts about the structure of data within lar...
Includes bibliographical references (p. 56-58).We present an algorithm called HS-means, which is abl...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
© 2014 IEEE. Clustering, as one of the most classical research problems in pattern recognition and d...
Multiview data clustering attracts more attention than their single-view counterparts due to the fac...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
Typically clustering algorithms provide clustering solutions with prespecified number of clusters. T...
Multi-clustering, which tries to find multiple independent ways to partition a data set into groups,...
A popular method for selecting the number of clusters is based on stability arguments: one chooses t...
Stability is a common tool to verify the validity of sample based algorithms. In clustering it is wi...
Stability is a common tool to verify the validity of sample based algorithms. In clustering it is wi...
Subspace clustering is to find underlying low-dimensional subspaces and cluster the data points corr...
Multiple clustering aims at discovering diverse ways of organizing data into clusters. Despite the p...
A popular method for selecting the number of clusters is based on sta-bility arguments: one chooses ...
Clustering has been widely used to identify possible structures in data and help users to understand...
Data mining involves searching for certain patterns and facts about the structure of data within lar...
Includes bibliographical references (p. 56-58).We present an algorithm called HS-means, which is abl...
A novel center-based clustering algorithm is proposed in this paper. We first for-mulate clustering ...
© 2014 IEEE. Clustering, as one of the most classical research problems in pattern recognition and d...
Multiview data clustering attracts more attention than their single-view counterparts due to the fac...
Finally, we study how to construct an appropriate graph for spectral clustering. Given a local simil...
Typically clustering algorithms provide clustering solutions with prespecified number of clusters. T...