Subspace clustering refers to the problem of finding low-dimensional subspaces (clusters) for high-dimensional data. Current state-of-the-art subspace clustering methods are usually based on spectral clustering, where an affinity matrix is learned by the self-expressive model, i.e., reconstructing every data point by a linear combination of all other points while regularizing the coefficients using the l1norm. The sparsity nature of l1norm guarantees the subspace-preserving property (i.e., no connection between clusters) of affinity matrix under certain condition, but the connectedness property (i.e., fully connected within clusters) is less considered. In this paper, we propose a novel affinity learning method by incorporating the sparse r...
Low-rank representation (LRR) has been successfully applied in exploring the subspace structures of ...
Data clustering is an important research topic in data mining and signal processing communications. ...
We introduce the Neural Collaborative Subspace Clustering, a neural model that discovers clusters of...
This paper proposes a one-step spectral clustering method by learning an intrinsic affinity matrix (...
Subspace clustering has been widely applied to detect meaningful clusters in high-dimensional data s...
In the thesis, we propose machine learning algorithms utilising diffusion processes to learn the pai...
Obtaining a good similarity matrix is extremely important in subspace clustering. Current state-of-t...
This paper addresses both the model selection (i.e., estimating the number of clusters K) and subspa...
Clustering data by identifying a subset of representative examples is important for detecting patter...
Similarity is the extent to which two objects resemble each other. Modeling similarity is an importa...
Subspace clustering aims to group a set of data from a union of subspaces into the subspace from whi...
Subspace clustering algorithms are notorious for their scalability issues because building and proce...
In the graph-based learning method, the data graph or similarity matrix reveals the relationship bet...
Finding the informative clusters of a high-dimensional dataset is at the core of numerous applicatio...
In this paper, we tackle the problem of clustering data points drawn from a union of linear (or affi...
Low-rank representation (LRR) has been successfully applied in exploring the subspace structures of ...
Data clustering is an important research topic in data mining and signal processing communications. ...
We introduce the Neural Collaborative Subspace Clustering, a neural model that discovers clusters of...
This paper proposes a one-step spectral clustering method by learning an intrinsic affinity matrix (...
Subspace clustering has been widely applied to detect meaningful clusters in high-dimensional data s...
In the thesis, we propose machine learning algorithms utilising diffusion processes to learn the pai...
Obtaining a good similarity matrix is extremely important in subspace clustering. Current state-of-t...
This paper addresses both the model selection (i.e., estimating the number of clusters K) and subspa...
Clustering data by identifying a subset of representative examples is important for detecting patter...
Similarity is the extent to which two objects resemble each other. Modeling similarity is an importa...
Subspace clustering aims to group a set of data from a union of subspaces into the subspace from whi...
Subspace clustering algorithms are notorious for their scalability issues because building and proce...
In the graph-based learning method, the data graph or similarity matrix reveals the relationship bet...
Finding the informative clusters of a high-dimensional dataset is at the core of numerous applicatio...
In this paper, we tackle the problem of clustering data points drawn from a union of linear (or affi...
Low-rank representation (LRR) has been successfully applied in exploring the subspace structures of ...
Data clustering is an important research topic in data mining and signal processing communications. ...
We introduce the Neural Collaborative Subspace Clustering, a neural model that discovers clusters of...