Extreme learning machine for joint embedding and clustering
Clustering generic data, i.e., data not specific to a particular field, is a challenging problem due to their diverse complex structures in the original feature space. Traditional approaches address this problem by complementing clustering with feature learning methods, which either capture the intr...
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sg-ntu-dr.10356-1387672020-05-12T08:18:24Z Extreme learning machine for joint embedding and clustering Liu, Tianchi Lekamalage, Chamara Kasun Liyanaarachchi Huang, Guang-Bin Lin, Zhiping School of Electrical and Electronic Engineering Engineering::Computer science and engineering Feature Learning Embedding Clustering generic data, i.e., data not specific to a particular field, is a challenging problem due to their diverse complex structures in the original feature space. Traditional approaches address this problem by complementing clustering with feature learning methods, which either capture the intrinsic structure of the data or represent the data such that clusters are better revealed. In this paper, we propose an approach referred to as Extreme Learning Machine for Joint Embedding and Clustering (ELM-JEC), which incorporates desirable properties of both types of feature learning methods at the same time, specifically by (1) preserving the manifold structure of the data in the original space; (2) maximizing the class separability of the data in the embedded space. Since either type of method has improved clustering performance in some cases, our motivation is to integrate the two desirable properties to further improve the accuracy and robustness of clustering. Additional notable features of ELM-JEC are that it provides nonlinear feature mappings and achieves feature learning and clustering in the same formulation. The proposed approach can be implemented using alternating optimization, and its clustering performance compares favorably with several state-of-the-art methods on the real-world benchmark datasets. MOE (Min. of Education, S’pore) 2020-05-12T08:18:24Z 2020-05-12T08:18:24Z 2017 Journal Article Liu, T., Lekamalage, C. K. L., Huang, G.-B., & Lin, Z. (2018). Extreme learning machine for joint embedding and clustering. Neurocomputing, 277, 78-88. doi:10.1016/j.neucom.2017.01.115 0925-2312 https://hdl.handle.net/10356/138767 10.1016/j.neucom.2017.01.115 2-s2.0-85029666112 277 78 88 en Neurocomputing © 2017 Elsevier B.V. All rights reserved. |
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Engineering::Computer science and engineering Feature Learning Embedding Liu, Tianchi Lekamalage, Chamara Kasun Liyanaarachchi Huang, Guang-Bin Lin, Zhiping Extreme learning machine for joint embedding and clustering |
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Clustering generic data, i.e., data not specific to a particular field, is a challenging problem due to their diverse complex structures in the original feature space. Traditional approaches address this problem by complementing clustering with feature learning methods, which either capture the intrinsic structure of the data or represent the data such that clusters are better revealed. In this paper, we propose an approach referred to as Extreme Learning Machine for Joint Embedding and Clustering (ELM-JEC), which incorporates desirable properties of both types of feature learning methods at the same time, specifically by (1) preserving the manifold structure of the data in the original space; (2) maximizing the class separability of the data in the embedded space. Since either type of method has improved clustering performance in some cases, our motivation is to integrate the two desirable properties to further improve the accuracy and robustness of clustering. Additional notable features of ELM-JEC are that it provides nonlinear feature mappings and achieves feature learning and clustering in the same formulation. The proposed approach can be implemented using alternating optimization, and its clustering performance compares favorably with several state-of-the-art methods on the real-world benchmark datasets. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Liu, Tianchi Lekamalage, Chamara Kasun Liyanaarachchi Huang, Guang-Bin Lin, Zhiping |
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Article |
author |
Liu, Tianchi Lekamalage, Chamara Kasun Liyanaarachchi Huang, Guang-Bin Lin, Zhiping |
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Liu, Tianchi |
title |
Extreme learning machine for joint embedding and clustering |
title_short |
Extreme learning machine for joint embedding and clustering |
title_full |
Extreme learning machine for joint embedding and clustering |
title_fullStr |
Extreme learning machine for joint embedding and clustering |
title_full_unstemmed |
Extreme learning machine for joint embedding and clustering |
title_sort |
extreme learning machine for joint embedding and clustering |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/138767 |
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1681058489533726720 |