Authors
Shiming Xiang, Feiping Nie, Gaofeng Meng, Chunhong Pan, Changshui Zhang
Publication date
2012/9/11
Journal
IEEE transactions on neural networks and learning systems
Volume
23
Issue
11
Pages
1738-1754
Publisher
IEEE
Description
This paper presents a framework of discriminative least squares regression (LSR) for multiclass classification and feature selection. The core idea is to enlarge the distance between different classes under the conceptual framework of LSR. First, a technique called ε-dragging is introduced to force the regression targets of different classes moving along opposite directions such that the distances between classes can be enlarged. Then, the ε-draggings are integrated into the LSR model for multiclass classification. Our learning framework, referred to as discriminative LSR, has a compact model form, where there is no need to train two-class machines that are independent of each other. With its compact form, this model can be naturally extended for feature selection. This goal is achieved in terms of L 2,1 norm of matrix, generating a sparse learning model for feature selection. The model for multiclass classification …
Total citations
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Scholar articles
S Xiang, F Nie, G Meng, C Pan, C Zhang - IEEE transactions on neural networks and learning …, 2012