Title
Semi-supervised classification method through oversampling and common hidden space.
Abstract
Semi-supervised classification methods attempt to improve classification performance based on a small amount of labeled data through full use of abundant unlabeled data. Although existing semi-supervised classification methods have exhibited promising results in many applications, they still have drawbacks, including performance degeneration, due to the introduction of unlabeled data and partially false labels in a small amount of labeled data. To circumvent such drawbacks, a new semi-supervised classification method OCHS-SSC through oversampling and a common hidden space is proposed in the paper. The primary characteristics of the proposed method include two aspects. One is that unlabeled data are only used to generate new synthetic data to extend the minimal amount of labeled data. The other is that the final classifier is learned in the extended feature space, which is composed of the original feature space and the common hidden space found between labeled data and the synthetic data instead of the original feature space. Extensive experiments on 23 datasets indicate the effectiveness of the proposed method.
Year
DOI
Venue
2016
10.1016/j.ins.2016.02.042
Inf. Sci.
Keywords
Field
DocType
Semi-supervised classification,Oversampling,Common hidden space,Dimensionality augmentation
Feature vector,Oversampling,Pattern recognition,Synthetic data,Artificial intelligence,Labeled data,Classifier (linguistics),Machine learning,Mathematics
Journal
Volume
Issue
ISSN
349-350
C
0020-0255
Citations 
PageRank 
References 
2
0.38
27
Authors
3
Name
Order
Citations
PageRank
Aimei Dong120.38
Fu Lai Chung2153486.72
Shitong Wang31485109.13