Feature selection has been widely recognized as one of the key problems in data mining and machine learning community, especially for high-dimensional data with redundant information, partial noises and outliers. Recently, unsupervised feature selection attracts substantial research attentions since data acquisition is rather cheap today but labeling work is still expensive and time consuming. This is specifically useful for effective feature selection of clustering tasks. Recent works using sparse projection with pre-learned pseudo labels achieve appealing results; however, they generate pseudo labels with all features so that noisy and ineffective features degrade the cluster structure and further harm the performance of feature selection...
Feature selection is an important step for data mining and machine learning to deal with the curse o...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
In the past decade, various sparse learning based unsupervised feature selection methods have been d...
To better pre-process unlabeled data, most existing feature selection methods remove redundant and n...
Sparse learning has been proven to be a powerful tech-nique in supervised feature selection, which a...
Unsupervised feature selection has been attracting research attention in the communities of machine ...
Feature selection for unsupervised data is a difficult task because a reference partition is not ava...
Feature selection for unsupervised data is a difficult task because a reference partition is not ava...
Feature selection is an important research area that seeks to eliminate unwanted features from datas...
Data have been collected for many years in different scientific (industrial, medical) research group...
© 1989-2012 IEEE. Many pattern analysis and data mining problems have witnessed high-dimensional dat...
Feature selection is an important step for data mining and machine learning. It can be used to reduc...
Sparse learning has been proven to be a powerful techniquein supervised feature selection, which all...
In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Sele...
Feature selection is an important step for data mining and machine learning to deal with the curse o...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
In the past decade, various sparse learning based unsupervised feature selection methods have been d...
To better pre-process unlabeled data, most existing feature selection methods remove redundant and n...
Sparse learning has been proven to be a powerful tech-nique in supervised feature selection, which a...
Unsupervised feature selection has been attracting research attention in the communities of machine ...
Feature selection for unsupervised data is a difficult task because a reference partition is not ava...
Feature selection for unsupervised data is a difficult task because a reference partition is not ava...
Feature selection is an important research area that seeks to eliminate unwanted features from datas...
Data have been collected for many years in different scientific (industrial, medical) research group...
© 1989-2012 IEEE. Many pattern analysis and data mining problems have witnessed high-dimensional dat...
Feature selection is an important step for data mining and machine learning. It can be used to reduc...
Sparse learning has been proven to be a powerful techniquein supervised feature selection, which all...
In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Sele...
Feature selection is an important step for data mining and machine learning to deal with the curse o...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...
The feature selection represents a key step in mining high-dimensional data: the significance of fea...