Graph-Based Safe Support Vector Machine for Multiple Classes
Semi-supervised learning (SSL) utilizes limited labeled data and plenty of unlabeled data, and it has attracted attentions for its improved learning performance. However, recent studies have indicated that using unlabeled data, in some cases, could deteriorate the performance. Therefore, there'...
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doaj-a23d984cb4e84c6492389dfa632a11bd2021-03-29T20:49:31ZengIEEEIEEE Access2169-35362018-01-016280972810710.1109/ACCESS.2018.28391878361797Graph-Based Safe Support Vector Machine for Multiple ClassesSong Wang0https://orcid.org/0000-0003-1547-9635Xin Guo1https://orcid.org/0000-0003-4153-4642Yun Tie2Ivan Lee3Lin Qi4Ling Guan5School of Information Engineering, Zhengzhou University, Zhengzhou, ChinaSchool of Information Engineering, Zhengzhou University, Zhengzhou, ChinaSchool of Information Engineering, Zhengzhou University, Zhengzhou, ChinaSchool of Information Technology and Mathematical Sciences, University of South Australia, Adelaide, SA, AustraliaSchool of Information Engineering, Zhengzhou University, Zhengzhou, ChinaDepartment of Electrical and Computer Engineering, Ryerson University, Toronto, CanadaSemi-supervised learning (SSL) utilizes limited labeled data and plenty of unlabeled data, and it has attracted attentions for its improved learning performance. However, recent studies have indicated that using unlabeled data, in some cases, could deteriorate the performance. Therefore, there's an imminent need to develop safe semi-supervised learning methods to determine whether SSL should be applied for a given scenario. This paper proposes a safe version of multi-class graph-based semi-supervised support vector machine (SVM). At first, in order to eliminate the impact of bad label assignments, a criterion based on the cost function of semi-supervised SVM is introduced to evaluate the predicted label assignments. Then, m candidate optimal label assignments are picked up by the criterion. After that, a multi-class safe strategy is designed to generate the final label assignment whose performance is never worse than that of the methods using only labeled samples. Experimental results on several benchmark data sets validate the effectiveness of the proposed technique.https://ieeexplore.ieee.org/document/8361797/Semi-supervised learningsafe strategymulti-class SVMgraph-based SVM |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Song Wang Xin Guo Yun Tie Ivan Lee Lin Qi Ling Guan |
spellingShingle |
Song Wang Xin Guo Yun Tie Ivan Lee Lin Qi Ling Guan Graph-Based Safe Support Vector Machine for Multiple Classes IEEE Access Semi-supervised learning safe strategy multi-class SVM graph-based SVM |
author_facet |
Song Wang Xin Guo Yun Tie Ivan Lee Lin Qi Ling Guan |
author_sort |
Song Wang |
title |
Graph-Based Safe Support Vector Machine for Multiple Classes |
title_short |
Graph-Based Safe Support Vector Machine for Multiple Classes |
title_full |
Graph-Based Safe Support Vector Machine for Multiple Classes |
title_fullStr |
Graph-Based Safe Support Vector Machine for Multiple Classes |
title_full_unstemmed |
Graph-Based Safe Support Vector Machine for Multiple Classes |
title_sort |
graph-based safe support vector machine for multiple classes |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2018-01-01 |
description |
Semi-supervised learning (SSL) utilizes limited labeled data and plenty of unlabeled data, and it has attracted attentions for its improved learning performance. However, recent studies have indicated that using unlabeled data, in some cases, could deteriorate the performance. Therefore, there's an imminent need to develop safe semi-supervised learning methods to determine whether SSL should be applied for a given scenario. This paper proposes a safe version of multi-class graph-based semi-supervised support vector machine (SVM). At first, in order to eliminate the impact of bad label assignments, a criterion based on the cost function of semi-supervised SVM is introduced to evaluate the predicted label assignments. Then, m candidate optimal label assignments are picked up by the criterion. After that, a multi-class safe strategy is designed to generate the final label assignment whose performance is never worse than that of the methods using only labeled samples. Experimental results on several benchmark data sets validate the effectiveness of the proposed technique. |
topic |
Semi-supervised learning safe strategy multi-class SVM graph-based SVM |
url |
https://ieeexplore.ieee.org/document/8361797/ |
work_keys_str_mv |
AT songwang graphbasedsafesupportvectormachineformultipleclasses AT xinguo graphbasedsafesupportvectormachineformultipleclasses AT yuntie graphbasedsafesupportvectormachineformultipleclasses AT ivanlee graphbasedsafesupportvectormachineformultipleclasses AT linqi graphbasedsafesupportvectormachineformultipleclasses AT lingguan graphbasedsafesupportvectormachineformultipleclasses |
_version_ |
1724194070616604672 |