Heterogeneous multitask metric learning across multiple domains
Distance metric learning plays a crucial role in diverse machine learning algorithms and applications. When the labeled information in a target domain is limited, transfer metric learning (TML) helps to learn the metric by leveraging the sufficient information from other related domains. Multitask m...
Saved in:
Main Authors: | , , |
---|---|
Other Authors: | |
Format: | Article |
Language: | English |
Published: |
2020
|
Subjects: | |
Online Access: | https://hdl.handle.net/10356/139878 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Institution: | Nanyang Technological University |
Language: | English |
id |
sg-ntu-dr.10356-139878 |
---|---|
record_format |
dspace |
spelling |
sg-ntu-dr.10356-1398782020-05-22T06:01:05Z Heterogeneous multitask metric learning across multiple domains Luo, Yong Wen, Yonggang Tao, Dacheng School of Computer Science and Engineering Engineering::Computer science and engineering Distance Metric Learning (DML) Heterogeneous Domain Distance metric learning plays a crucial role in diverse machine learning algorithms and applications. When the labeled information in a target domain is limited, transfer metric learning (TML) helps to learn the metric by leveraging the sufficient information from other related domains. Multitask metric learning (MTML), which can be regarded as a special case of TML, performs transfer across all related domains. Current TML tools usually assume that the same feature representation is exploited for different domains. However, in real-world applications, data may be drawn from heterogeneous domains. Heterogeneous transfer learning approaches can be adopted to remedy this drawback by deriving a metric from the learned transformation across different domains. However, they are often limited in that only two domains can be handled. To appropriately handle multiple domains, we develop a novel heterogeneous MTML (HMTML) framework. In HMTML, the metrics of all different domains are learned together. The transformations derived from the metrics are utilized to induce a common subspace, and the high-order covariance among the predictive structures of these domains is maximized in this subspace. There do exist a few heterogeneous transfer learning approaches that deal with multiple domains, but the high-order statistics (correlation information), which can only be exploited by simultaneously examining all domains, is ignored in these approaches. Compared with them, the proposed HMTML can effectively explore such high-order information, thus obtaining more reliable feature transformations and metrics. Effectiveness of our method is validated by the extensive and intensive experiments on text categorization, scene classification, and social image annotation. NRF (Natl Research Foundation, S’pore) 2020-05-22T06:01:05Z 2020-05-22T06:01:05Z 2017 Journal Article Luo, Y., Wen, Y., & Tao, D. (2018). Heterogeneous multitask metric learning across multiple domains. IEEE Transactions on Neural Networks and Learning Systems, 29(9), 4051-4064. doi:10.1109/TNNLS.2017.2750321 2162-237X https://hdl.handle.net/10356/139878 10.1109/TNNLS.2017.2750321 28981432 2-s2.0-85030779435 9 29 4051 4064 en IEEE Transactions on Neural Networks and Learning Systems © 2017 IEEE. All rights reserved. |
institution |
Nanyang Technological University |
building |
NTU Library |
country |
Singapore |
collection |
DR-NTU |
language |
English |
topic |
Engineering::Computer science and engineering Distance Metric Learning (DML) Heterogeneous Domain |
spellingShingle |
Engineering::Computer science and engineering Distance Metric Learning (DML) Heterogeneous Domain Luo, Yong Wen, Yonggang Tao, Dacheng Heterogeneous multitask metric learning across multiple domains |
description |
Distance metric learning plays a crucial role in diverse machine learning algorithms and applications. When the labeled information in a target domain is limited, transfer metric learning (TML) helps to learn the metric by leveraging the sufficient information from other related domains. Multitask metric learning (MTML), which can be regarded as a special case of TML, performs transfer across all related domains. Current TML tools usually assume that the same feature representation is exploited for different domains. However, in real-world applications, data may be drawn from heterogeneous domains. Heterogeneous transfer learning approaches can be adopted to remedy this drawback by deriving a metric from the learned transformation across different domains. However, they are often limited in that only two domains can be handled. To appropriately handle multiple domains, we develop a novel heterogeneous MTML (HMTML) framework. In HMTML, the metrics of all different domains are learned together. The transformations derived from the metrics are utilized to induce a common subspace, and the high-order covariance among the predictive structures of these domains is maximized in this subspace. There do exist a few heterogeneous transfer learning approaches that deal with multiple domains, but the high-order statistics (correlation information), which can only be exploited by simultaneously examining all domains, is ignored in these approaches. Compared with them, the proposed HMTML can effectively explore such high-order information, thus obtaining more reliable feature transformations and metrics. Effectiveness of our method is validated by the extensive and intensive experiments on text categorization, scene classification, and social image annotation. |
author2 |
School of Computer Science and Engineering |
author_facet |
School of Computer Science and Engineering Luo, Yong Wen, Yonggang Tao, Dacheng |
format |
Article |
author |
Luo, Yong Wen, Yonggang Tao, Dacheng |
author_sort |
Luo, Yong |
title |
Heterogeneous multitask metric learning across multiple domains |
title_short |
Heterogeneous multitask metric learning across multiple domains |
title_full |
Heterogeneous multitask metric learning across multiple domains |
title_fullStr |
Heterogeneous multitask metric learning across multiple domains |
title_full_unstemmed |
Heterogeneous multitask metric learning across multiple domains |
title_sort |
heterogeneous multitask metric learning across multiple domains |
publishDate |
2020 |
url |
https://hdl.handle.net/10356/139878 |
_version_ |
1681058418314444800 |