Compared with supervised learning for feature selection, it is much more difficult to select the discriminative features in unsupervised learning due to the lack of label information. Traditional unsupervised feature selection algorithms usually select the features which best preserve the data distribution, e.g., manifold structure, of the whole feature set. Under the assumption that the class label of input data can be predicted by a linear classifier, we incorporate discriminative analysis and ℓ2,1-norm minimization into a joint framework for unsupervised feature selection. Different from existing unsupervised feature selection algorithms, our algorithm selects the most discriminative feature subset from the whole feature set in batch mod...
In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Sele...
Feature selection techniques are very useful approaches for dimensionality reduction in data analysi...
By removing the irrelevant and redundant features, feature selection aims to find a compact represen...
Feature selection is an important technique in machine learning research. An effective and robust fe...
Copyright © 2017, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Traditional nonlinear feature selection methods map the data from an original space into a kernel sp...
Abstract—Feature selection and feature transformation, the two main ways to reduce dimensionality, a...
Abstract—In this paper, we consider the problem of feature selection in unsupervised learning scenar...
In supervised learning scenarios, feature selection has been studied widely in the literature. Selec...
There are a lot of redundant and irrelevant features in high-dimensional data,which seriously affect...
Unsupervised feature selection has been attracting research attention in the communities of machine ...
Feature selection aims to reduce dimensionality for building comprehensible learning models with goo...
Many learning problems require handling high dimensional data sets with a relatively small number of...
Abstract—Feature selection has been widely studied in the literature in both supervised and unsuperv...
Many learning problems require handling high dimensional data sets with a relatively small number of...
In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Sele...
Feature selection techniques are very useful approaches for dimensionality reduction in data analysi...
By removing the irrelevant and redundant features, feature selection aims to find a compact represen...
Feature selection is an important technique in machine learning research. An effective and robust fe...
Copyright © 2017, Association for the Advancement of Artificial Intelligence (www.aaai.org). All rig...
Traditional nonlinear feature selection methods map the data from an original space into a kernel sp...
Abstract—Feature selection and feature transformation, the two main ways to reduce dimensionality, a...
Abstract—In this paper, we consider the problem of feature selection in unsupervised learning scenar...
In supervised learning scenarios, feature selection has been studied widely in the literature. Selec...
There are a lot of redundant and irrelevant features in high-dimensional data,which seriously affect...
Unsupervised feature selection has been attracting research attention in the communities of machine ...
Feature selection aims to reduce dimensionality for building comprehensible learning models with goo...
Many learning problems require handling high dimensional data sets with a relatively small number of...
Abstract—Feature selection has been widely studied in the literature in both supervised and unsuperv...
Many learning problems require handling high dimensional data sets with a relatively small number of...
In this paper, a new unsupervised learning algorithm, namely Nonnegative Discriminative Feature Sele...
Feature selection techniques are very useful approaches for dimensionality reduction in data analysi...
By removing the irrelevant and redundant features, feature selection aims to find a compact represen...