High-Order Co-Clustering (HOCC) methods have attracted high attention in recent years because of their ability to cluster multiple types of objects simultaneously using all available information. During the clustering process, HOCC methods exploit object co-occurrence information, i.e., inter-type relationships amongst different types of objects as well as object affinity information, i.e., intra-type relationships amongst the same types of objects. However, it is difficult to learn accurate intra-type relationships in the presence of noise and outliers. Existing HOCC methods consider the p nearest neighbours based on Euclidean distance for the intra-type relationships, which leads to incomplete and inaccurate intra-type relationships. In t...
In a number of domains in computer vision, machine learning and psychology, it is common to model an...
We propose a low-rank transformation-learning framework to robustify sub-space clustering. Many high...
Heterogeneous object co-clustering has become an important research topic in data mining. In early y...
High-Order Co-Clustering (HOCC) methods have attracted high attention in recent years because of the...
Abstract—The fast growth of Internet and modern tech-nologies has brought data involving objects of ...
Clustering on the data with multiple aspects, such as multi-view or multi-type relational data, has ...
This paper addresses both the model selection (i.e., estimating the number of clusters K) and subspa...
Graph-oriented methods have been widely adopted in multi-view clustering because of their efficiency...
Abstract It is a challenging task to integrate multi-view representations, each of which is of high ...
Non-negative Matrix Factorization (NMF) methods have been effectively used for clustering high dimen...
We proposed two novel clustering approaches, AFS and AFSSC, to address the problems in image cluster...
Co-clustering is based on the duality between data points (e.g. documents) and features (e.g. words)...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
Multi-view data that contains the data represented in many types of features has received much atten...
Heterogeneous information networks consist of different types of objects and links. They can be foun...
In a number of domains in computer vision, machine learning and psychology, it is common to model an...
We propose a low-rank transformation-learning framework to robustify sub-space clustering. Many high...
Heterogeneous object co-clustering has become an important research topic in data mining. In early y...
High-Order Co-Clustering (HOCC) methods have attracted high attention in recent years because of the...
Abstract—The fast growth of Internet and modern tech-nologies has brought data involving objects of ...
Clustering on the data with multiple aspects, such as multi-view or multi-type relational data, has ...
This paper addresses both the model selection (i.e., estimating the number of clusters K) and subspa...
Graph-oriented methods have been widely adopted in multi-view clustering because of their efficiency...
Abstract It is a challenging task to integrate multi-view representations, each of which is of high ...
Non-negative Matrix Factorization (NMF) methods have been effectively used for clustering high dimen...
We proposed two novel clustering approaches, AFS and AFSSC, to address the problems in image cluster...
Co-clustering is based on the duality between data points (e.g. documents) and features (e.g. words)...
This dissertation takes a relationship-based approach to cluster analysis of high (1000 and more) d...
Multi-view data that contains the data represented in many types of features has received much atten...
Heterogeneous information networks consist of different types of objects and links. They can be foun...
In a number of domains in computer vision, machine learning and psychology, it is common to model an...
We propose a low-rank transformation-learning framework to robustify sub-space clustering. Many high...
Heterogeneous object co-clustering has become an important research topic in data mining. In early y...