We study the problem of pattern-based subspace clustering. Unlike traditional clustering methods that focus on grouping objects with similar values on a set of dimensions, clustering by pattern similarity finds objects that exhibit a coherent pattern of rises and falls in subspaces. Applications of pattern-based subspace clustering include DNA micro-array data analysis, automatic recommendation systems and target marketing systems. Our goal is to devise pattern-based clustering methods that are capable of (1) discovering useful patterns of various shapes, and (2) discovering all significant patterns. We argue that previous solutions in pattern-based subspace clustering do not satisfy both requirements. Our approach is to extend the idea of ...
We explore connections of low-rank matrix factorizations with interesting problems in data mining an...
In this paper we consider the Order Preserving Submatrix (OPSM) problem. This problem is known to be...
This paper concerns the discovery of patterns in gene expres-sion matrices, in which each element gi...
As matrix is a common data presentation in many applications, the submatrix mining problem has been ...
Mining order-preserving submatrix (OPSM) patterns has received much attention from researchers, sinc...
Abstract—In recent applications of clustering such as gene expression microarray analysis, collabora...
Copyright © 2015 Yun Xue et al.This is an open access article distributed under the Creative Commons...
The Order-Preserving SubMatrices (OPSMs) are employed to discover significant biological association...
As a prolific research area in data mining, subspace clus-tering and related problems induced a vast...
Abstract The task of clustering is to identify classes of similar objects among a set of objects. Th...
Order-preserving submatrixes (OPSMs) have been accepted as a biologically meaningful subspace cluste...
In this paper, we explore the discriminating subsequence-based clustering problem. First, several ef...
Abstract—The problem of detecting clusters in high-dimensional data is increasingly common in machin...
AbstractUnlike traditional clustering methods that focus on grouping objects with similar values on ...
The increasing potential of storage technologies and information systems has opened the possibility ...
We explore connections of low-rank matrix factorizations with interesting problems in data mining an...
In this paper we consider the Order Preserving Submatrix (OPSM) problem. This problem is known to be...
This paper concerns the discovery of patterns in gene expres-sion matrices, in which each element gi...
As matrix is a common data presentation in many applications, the submatrix mining problem has been ...
Mining order-preserving submatrix (OPSM) patterns has received much attention from researchers, sinc...
Abstract—In recent applications of clustering such as gene expression microarray analysis, collabora...
Copyright © 2015 Yun Xue et al.This is an open access article distributed under the Creative Commons...
The Order-Preserving SubMatrices (OPSMs) are employed to discover significant biological association...
As a prolific research area in data mining, subspace clus-tering and related problems induced a vast...
Abstract The task of clustering is to identify classes of similar objects among a set of objects. Th...
Order-preserving submatrixes (OPSMs) have been accepted as a biologically meaningful subspace cluste...
In this paper, we explore the discriminating subsequence-based clustering problem. First, several ef...
Abstract—The problem of detecting clusters in high-dimensional data is increasingly common in machin...
AbstractUnlike traditional clustering methods that focus on grouping objects with similar values on ...
The increasing potential of storage technologies and information systems has opened the possibility ...
We explore connections of low-rank matrix factorizations with interesting problems in data mining an...
In this paper we consider the Order Preserving Submatrix (OPSM) problem. This problem is known to be...
This paper concerns the discovery of patterns in gene expres-sion matrices, in which each element gi...