Abstract—Feature selection has been widely studied in the literature in both supervised and unsupervised scenario for dimensionality reduction. Supervised methods may cost too much on labeling, while unsupervised ones may lose efficacy because of lack of labels. In order to reduce dimensionality with less expense and higher efficiency, we propose a novel semi-supervised method based on Linear Discriminant Feature Selection (LDFS) and graph optimization framework, called Semi-supervised Discriminant Feature Selection (SDFS), which makes use of both labeled and unlabeled samples. Specifically, a small number of labeled data points are used to maximize the separability between different classes and a large amount of unlabeled data points are u...
Feature selection is a term standardin data mining to reduce inputs to a manageable size for analysi...
In previous work, we have shown that both unsupervised feature selection and the semi-supervised clu...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
We are interested in using the goal of making predictions to influence dimensionality reduction proc...
Nowadays, the advanced technologies make amounts of data growing in a fast paced way. In many applic...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...
In this paper, we propose a Discriminative Semi-Supervised Feature Selection (DSSFS) method. In this...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
As data acquisition has become relatively easy and inexpensive, data sets are becoming extremely lar...
Abstract—Feature selection and feature transformation, the two main ways to reduce dimensionality, a...
We are interested in using the goal of making predictions to influence dimensionality reduction proc...
With the increasing data dimensionality, feature selection has become a fundamental task to deal wit...
Feature selection is a term standardin data mining to reduce inputs to a manageable size for analysi...
In this paper, we propose a novel Adaptive Discriminant Analysis for semi-supervised feature selecti...
Feature selection is a term standardin data mining to reduce inputs to a manageable size for analysi...
In previous work, we have shown that both unsupervised feature selection and the semi-supervised clu...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
We are interested in using the goal of making predictions to influence dimensionality reduction proc...
Nowadays, the advanced technologies make amounts of data growing in a fast paced way. In many applic...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...
In this paper, we propose a Discriminative Semi-Supervised Feature Selection (DSSFS) method. In this...
International audienceThis paper describes a three-level framework for semi-supervised feature selec...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...
As data acquisition has become relatively easy and inexpensive, data sets are becoming extremely lar...
Abstract—Feature selection and feature transformation, the two main ways to reduce dimensionality, a...
We are interested in using the goal of making predictions to influence dimensionality reduction proc...
With the increasing data dimensionality, feature selection has become a fundamental task to deal wit...
Feature selection is a term standardin data mining to reduce inputs to a manageable size for analysi...
In this paper, we propose a novel Adaptive Discriminant Analysis for semi-supervised feature selecti...
Feature selection is a term standardin data mining to reduce inputs to a manageable size for analysi...
In previous work, we have shown that both unsupervised feature selection and the semi-supervised clu...
AbstractFeature selection, as a dimensionality reduction technique, aims to choosing a small subset ...