Learning from multi-view data is important in many applications. In this paper, we propose a novel convex subspace representation learning method for unsupervised multi-view clustering. We first formulate the subspace learning with multiple views as a joint optimization problem with a common subspace representation matrix and a group sparsity inducing norm. By exploiting the properties of dual norms, we then show a convex min-max dual formulation with a sparsity inducing trace norm can be obtained.We develop a proximal bundle optimization algorithm to globally solve the minmax optimization problem. Our empirical study shows the proposed subspace representation learning method can effectively facilitate multi-view clustering and induce super...
Abstract. This paper presents the multi-subspace discovery problem and provides a theoretical soluti...
We propose a low-rank transformation-learning framework to robustify sub-space clustering. Many high...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Learning from multi-view data is important in many applications. In this paper, we propose a novel c...
Learning from multi-view data is important in many applications. In this paper, we propose a novel c...
Multi-view clustering has attracted intensive attention due to the effectiveness of exploiting multi...
In many computer vision and machine learning applications, the data sets distribute on certain low-d...
Subspace learning seeks a low dimensional representation of data that enables accurate reconstructio...
As the ability to collect and store data improving, real data are usually made up of different forms...
For many computer vision applications, the data sets distribute on certain low;dimensional subspaces...
Most existing approaches address multi-view subspace clustering problem by constructing the affinity...
Previous multi-view clustering algorithms mostly partition the multi-view data in their original fea...
Multi-view subspace clustering aims to discover the hidden subspace structures from multiple views f...
We consider subspace clustering under sparse noise, for which a non-convex optimization framework ba...
Subspace clustering is to find underlying low-dimensional subspaces and cluster the data points corr...
Abstract. This paper presents the multi-subspace discovery problem and provides a theoretical soluti...
We propose a low-rank transformation-learning framework to robustify sub-space clustering. Many high...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
Learning from multi-view data is important in many applications. In this paper, we propose a novel c...
Learning from multi-view data is important in many applications. In this paper, we propose a novel c...
Multi-view clustering has attracted intensive attention due to the effectiveness of exploiting multi...
In many computer vision and machine learning applications, the data sets distribute on certain low-d...
Subspace learning seeks a low dimensional representation of data that enables accurate reconstructio...
As the ability to collect and store data improving, real data are usually made up of different forms...
For many computer vision applications, the data sets distribute on certain low;dimensional subspaces...
Most existing approaches address multi-view subspace clustering problem by constructing the affinity...
Previous multi-view clustering algorithms mostly partition the multi-view data in their original fea...
Multi-view subspace clustering aims to discover the hidden subspace structures from multiple views f...
We consider subspace clustering under sparse noise, for which a non-convex optimization framework ba...
Subspace clustering is to find underlying low-dimensional subspaces and cluster the data points corr...
Abstract. This paper presents the multi-subspace discovery problem and provides a theoretical soluti...
We propose a low-rank transformation-learning framework to robustify sub-space clustering. Many high...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...