Copyright © 2017, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rights reserved. Low-rank matrix approximation has been widely used for data subspace clustering and feature representation in many computer vision and pattern recognition applications. However, in order to enhance the discriminability, most of the matrix approximation based feature extraction algorithms usually generate the cluster labels by certain clustering algorithm (e.g., the kmeans) and then perform the matrix approximation guided by such label information. In addition, the noises and outliers in the dataset with large reconstruction errors will easily dominate the objective function by the conventional ℓ2-norm based squared residue minim...
Traditional matrix factorization methods approximate high dimensional data with a low dimensional su...
Low-rank representation (LRR) has received considerable attention in subspace segmentation due to it...
In order to handle semi-supervised clustering scenarios where only part of the pairwise constraint i...
Low-rank matrix approximation has been widely used for data subspace clustering and feature represen...
Data clustering is the task to group the data samples into certain clusters based on the relationshi...
© 2017 IEEE. In recent years, various data clustering algorithms have been proposed in the data mini...
<p> Non-negative matrix factorization (NMF) has been one of the most popular methods for feature le...
Arnonkijpanich B, Hasenfuss A, Hammer B. Local matrix learning in clustering and applications for ma...
Cluster analysis by nonnegative low-rank approximations has experienced a remarkable progress in the...
We explore connections of low-rank matrix factorizations with interesting problems in data mining an...
This paper studies clustering for possibly high dimensional data (e.g. images, time series, gene exp...
© 2020 Most of manifold learning based feature extraction methods are two-step methods, which first ...
Data clustering is an important research topic in data mining and signal processing communications. ...
Low-rank representation (LRR) has received considerable attention in subspace segmentation due to it...
Traditional matrix factorization methods approximate high dimensional data with a low dimensional su...
Traditional matrix factorization methods approximate high dimensional data with a low dimensional su...
Low-rank representation (LRR) has received considerable attention in subspace segmentation due to it...
In order to handle semi-supervised clustering scenarios where only part of the pairwise constraint i...
Low-rank matrix approximation has been widely used for data subspace clustering and feature represen...
Data clustering is the task to group the data samples into certain clusters based on the relationshi...
© 2017 IEEE. In recent years, various data clustering algorithms have been proposed in the data mini...
<p> Non-negative matrix factorization (NMF) has been one of the most popular methods for feature le...
Arnonkijpanich B, Hasenfuss A, Hammer B. Local matrix learning in clustering and applications for ma...
Cluster analysis by nonnegative low-rank approximations has experienced a remarkable progress in the...
We explore connections of low-rank matrix factorizations with interesting problems in data mining an...
This paper studies clustering for possibly high dimensional data (e.g. images, time series, gene exp...
© 2020 Most of manifold learning based feature extraction methods are two-step methods, which first ...
Data clustering is an important research topic in data mining and signal processing communications. ...
Low-rank representation (LRR) has received considerable attention in subspace segmentation due to it...
Traditional matrix factorization methods approximate high dimensional data with a low dimensional su...
Traditional matrix factorization methods approximate high dimensional data with a low dimensional su...
Low-rank representation (LRR) has received considerable attention in subspace segmentation due to it...
In order to handle semi-supervised clustering scenarios where only part of the pairwise constraint i...