Learning Bregman distance functions for semi-supervised clustering
Learning distance functions with side information plays a key role in many data mining applications. Conventional distance metric learning approaches often assume that the target distance function is represented in some form of Mahalanobis distance. These approaches usually work well when data are i...
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sg-ntu-dr.10356-845062020-05-28T07:18:05Z Learning Bregman distance functions for semi-supervised clustering Wu, Lei. Hoi, Steven C. H. Jin, Rong. Zhu, Jianke. Yu, Nenghai. School of Computer Engineering DRNTU::Engineering::Computer science and engineering Learning distance functions with side information plays a key role in many data mining applications. Conventional distance metric learning approaches often assume that the target distance function is represented in some form of Mahalanobis distance. These approaches usually work well when data are in low dimensionality, but often become computationally expensive or even infeasible when handling high-dimensional data. In this paper, we propose a novel scheme of learning nonlinear distance functions with side information. It aims to learn a Bregman distance function using a nonparametric approach that is similar to Support Vector Machines. We emphasize that the proposed scheme is more general than the conventional approach for distance metric learning, and is able to handle high-dimensional data efficiently. We verify the efficacy of the proposed distance learning method with extensive experiments on semi-supervised clustering. The comparison with state-of-the-art approaches for learning distance functions with side information reveals clear advantages of the proposed technique. 2013-09-13T03:08:43Z 2019-12-06T15:46:14Z 2013-09-13T03:08:43Z 2019-12-06T15:46:14Z 2012 2012 Journal Article Wu, L., Hoi, S. C. H., Jin, R., Zhu, J. & Yu, N. (2012). Learning Bregman Distance Functions for Semi-Supervised Clustering. IEEE Transactions on Knowledge and Data Engineering, 24(3), 478-491. 1041-4347 https://hdl.handle.net/10356/84506 http://hdl.handle.net/10220/13469 10.1109/TKDE.2010.215 en IEEE transactions on knowledge and data engineering © 2012 IEEE |
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DRNTU::Engineering::Computer science and engineering Wu, Lei. Hoi, Steven C. H. Jin, Rong. Zhu, Jianke. Yu, Nenghai. Learning Bregman distance functions for semi-supervised clustering |
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Learning distance functions with side information plays a key role in many data mining applications. Conventional distance metric learning approaches often assume that the target distance function is represented in some form of Mahalanobis distance. These approaches usually work well when data are in low dimensionality, but often become computationally expensive or even infeasible when handling high-dimensional data. In this paper, we propose a novel scheme of learning nonlinear distance functions with side information. It aims to learn a Bregman distance function using a nonparametric approach that is similar to Support Vector Machines. We emphasize that the proposed scheme is more general than the conventional approach for distance metric learning, and is able to handle high-dimensional data efficiently. We verify the efficacy of the proposed distance learning method with extensive experiments on semi-supervised clustering. The comparison with state-of-the-art approaches for learning distance functions with side information reveals clear advantages of the proposed technique. |
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School of Computer Engineering |
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School of Computer Engineering Wu, Lei. Hoi, Steven C. H. Jin, Rong. Zhu, Jianke. Yu, Nenghai. |
format |
Article |
author |
Wu, Lei. Hoi, Steven C. H. Jin, Rong. Zhu, Jianke. Yu, Nenghai. |
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Wu, Lei. |
title |
Learning Bregman distance functions for semi-supervised clustering |
title_short |
Learning Bregman distance functions for semi-supervised clustering |
title_full |
Learning Bregman distance functions for semi-supervised clustering |
title_fullStr |
Learning Bregman distance functions for semi-supervised clustering |
title_full_unstemmed |
Learning Bregman distance functions for semi-supervised clustering |
title_sort |
learning bregman distance functions for semi-supervised clustering |
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2013 |
url |
https://hdl.handle.net/10356/84506 http://hdl.handle.net/10220/13469 |
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1681059748214996992 |