Transductive ordinal regression

Ordinal regression is commonly formulated as a multiclass problem with ordinal constraints. The challenge of designing accurate classifiers for ordinal regression generally increases with the number of classes involved, due to the large number of labeled patterns that are needed. The availability of...

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Main Authors: Seah, Chun-Wei, Tsang, Ivor Wai-Hung, Ong, Yew Soon
Other Authors: School of Computer Engineering
Format: Article
Language:English
Published: 2013
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Online Access:https://hdl.handle.net/10356/99141
http://hdl.handle.net/10220/13515
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-991412020-05-28T07:41:33Z Transductive ordinal regression Seah, Chun-Wei Tsang, Ivor Wai-Hung Ong, Yew Soon School of Computer Engineering DRNTU::Engineering::Computer science and engineering Ordinal regression is commonly formulated as a multiclass problem with ordinal constraints. The challenge of designing accurate classifiers for ordinal regression generally increases with the number of classes involved, due to the large number of labeled patterns that are needed. The availability of ordinal class labels, however, is often costly to calibrate or difficult to obtain. Unlabeled patterns, on the other hand, often exist in much greater abundance and are freely available. To take benefits from the abundance of unlabeled patterns, we present a novel transductive learning paradigm for ordinal regression in this paper, namely transductive ordinal regression (TOR). The key challenge of this paper lies in the precise estimation of both the ordinal class label of the unlabeled data and the decision functions of the ordinal classes, simultaneously. The core elements of the proposed TOR include an objective function that caters to several commonly used loss functions casted in transductive settings, for general ordinal regression. A label swapping scheme that facilitates a strictly monotonic decrease in the objective function value is also introduced. Extensive numerical studies on commonly used benchmark datasets including the real-world sentiment prediction problem are then presented to showcase the characteristics and efficacies of the proposed TOR. Further, comparisons to recent state-of-the-art ordinal regression methods demonstrate the introduced transductive learning paradigm for ordinal regression led to the robust and improved performance. 2013-09-18T03:01:19Z 2019-12-06T20:03:49Z 2013-09-18T03:01:19Z 2019-12-06T20:03:49Z 2012 2012 Journal Article Seah, C., Tsang, I. W., & Ong, Y. (2012). Transductive ordinal regression. IEEE transactions on neural networks and learning systems, 23(7), 1074-1086. 2162-237X https://hdl.handle.net/10356/99141 http://hdl.handle.net/10220/13515 10.1109/TNNLS.2012.2198240 en IEEE transactions on neural networks and learning systems © 2012 IEEE
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic DRNTU::Engineering::Computer science and engineering
spellingShingle DRNTU::Engineering::Computer science and engineering
Seah, Chun-Wei
Tsang, Ivor Wai-Hung
Ong, Yew Soon
Transductive ordinal regression
description Ordinal regression is commonly formulated as a multiclass problem with ordinal constraints. The challenge of designing accurate classifiers for ordinal regression generally increases with the number of classes involved, due to the large number of labeled patterns that are needed. The availability of ordinal class labels, however, is often costly to calibrate or difficult to obtain. Unlabeled patterns, on the other hand, often exist in much greater abundance and are freely available. To take benefits from the abundance of unlabeled patterns, we present a novel transductive learning paradigm for ordinal regression in this paper, namely transductive ordinal regression (TOR). The key challenge of this paper lies in the precise estimation of both the ordinal class label of the unlabeled data and the decision functions of the ordinal classes, simultaneously. The core elements of the proposed TOR include an objective function that caters to several commonly used loss functions casted in transductive settings, for general ordinal regression. A label swapping scheme that facilitates a strictly monotonic decrease in the objective function value is also introduced. Extensive numerical studies on commonly used benchmark datasets including the real-world sentiment prediction problem are then presented to showcase the characteristics and efficacies of the proposed TOR. Further, comparisons to recent state-of-the-art ordinal regression methods demonstrate the introduced transductive learning paradigm for ordinal regression led to the robust and improved performance.
author2 School of Computer Engineering
author_facet School of Computer Engineering
Seah, Chun-Wei
Tsang, Ivor Wai-Hung
Ong, Yew Soon
format Article
author Seah, Chun-Wei
Tsang, Ivor Wai-Hung
Ong, Yew Soon
author_sort Seah, Chun-Wei
title Transductive ordinal regression
title_short Transductive ordinal regression
title_full Transductive ordinal regression
title_fullStr Transductive ordinal regression
title_full_unstemmed Transductive ordinal regression
title_sort transductive ordinal regression
publishDate 2013
url https://hdl.handle.net/10356/99141
http://hdl.handle.net/10220/13515
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