<p>In this brief, a novel self-weighted orthogonal linear discriminant analysis (SOLDA) problem is proposed, and a self-weighted supervised discriminative feature selection (SSD-FS) method is derived by introducing sparsity-inducing regularization to the proposed SOLDA problem. By using the row-sparse projection, the proposed SSD-FS method is superior to multiple sparse feature selection approaches, which can overly suppress the nonzero rows such that the associated features are insufficient for selection. More specifically, the orthogonal constraint ensures the minimal number of selectable features for the proposed SSD-FS method. In addition, the proposed feature selection method is able to harness the discriminant power such that the disc...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. Linear discriminant analysis (LDA) is ...
Abstract—Feature selection has been widely studied in the literature in both supervised and unsuperv...
A generalized discriminant analysis based on a new optimization criterion is presented. The criterio...
Abstract—Feature selection and feature transformation, the two main ways to reduce dimensionality, a...
In this paper, we propose a novel Adaptive Discriminant Analysis for semi-supervised feature selecti...
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), ...
In this paper, we propose a Discriminative Semi-Supervised Feature Selection (DSSFS) method. In this...
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
Feature selection is an effective technique for dimensionality reduction to get the most useful info...
© 2012 IEEE. Feature selection (FS) is an important component of many pattern recognition tasks. In ...
Compared with supervised learning for feature selection, it is much more difficult to select the dis...
By removing the irrelevant and redundant features, feature selection aims to find a compact represen...
Abstract—This paper focuses on enhancing feature selection (FS) performance on a classification data...
The linear discriminant analysis (LDA) is a popular technique for dimensionality reduction, neverthe...
A variety of feature selection methods based on sparsity regularization have been developed with dif...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. Linear discriminant analysis (LDA) is ...
Abstract—Feature selection has been widely studied in the literature in both supervised and unsuperv...
A generalized discriminant analysis based on a new optimization criterion is presented. The criterio...
Abstract—Feature selection and feature transformation, the two main ways to reduce dimensionality, a...
In this paper, we propose a novel Adaptive Discriminant Analysis for semi-supervised feature selecti...
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), ...
In this paper, we propose a Discriminative Semi-Supervised Feature Selection (DSSFS) method. In this...
22nd International Conference on Pattern Recognition, ICPR 2014, Sweden, 24-28 August 2014This paper...
Feature selection is an effective technique for dimensionality reduction to get the most useful info...
© 2012 IEEE. Feature selection (FS) is an important component of many pattern recognition tasks. In ...
Compared with supervised learning for feature selection, it is much more difficult to select the dis...
By removing the irrelevant and redundant features, feature selection aims to find a compact represen...
Abstract—This paper focuses on enhancing feature selection (FS) performance on a classification data...
The linear discriminant analysis (LDA) is a popular technique for dimensionality reduction, neverthe...
A variety of feature selection methods based on sparsity regularization have been developed with dif...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. Linear discriminant analysis (LDA) is ...
Abstract—Feature selection has been widely studied in the literature in both supervised and unsuperv...
A generalized discriminant analysis based on a new optimization criterion is presented. The criterio...