Automatic online multi-source domain adaptation
Knowledge transfer across several streaming processes remain challenging problem not only because of different distributions of each stream but also because of rapidly changing and never-ending environments of data streams. Albeit growing research achievements in this area, most of existing works ar...
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sg-ntu-dr.10356-1595172022-06-24T07:03:30Z Automatic online multi-source domain adaptation Xie, Renchunzi Pratama, Mahardhika School of Computer Science and Engineering Engineering::Computer science and engineering Evolving Intelligent Systems Transfer Learning Knowledge transfer across several streaming processes remain challenging problem not only because of different distributions of each stream but also because of rapidly changing and never-ending environments of data streams. Albeit growing research achievements in this area, most of existing works are developed for a single source domain which limits its resilience to exploit multi-source domains being beneficial to recover from concept drifts quickly and to avoid the negative transfer problem. An online domain adaptation technique under multi-source streaming processes, namely automatic online multi-source domain adaptation (AOMSDA), is proposed in this paper. The online domain adaptation strategy of AOMSDA is formulated under a coupled generative and discriminative approach of denoising autoencoder (DAE) where the central moment discrepancy (CMD)-based regularizer is integrated to handle the existence of multi-source domains thereby taking advantage of complementary information sources. The asynchronous concept drifts taking place at different time periods are addressed by a self-organizing structure and a node re-weighting strategy. Our numerical study demonstrates that AOMSDA is capable of outperforming its counterparts in 5 of 8 study cases while the ablation study depicts the advantage of each learning component. In addition, AOMSDA is general for any number of source streams. The source code of AOMSDA is shared publicly in https://github.com/Renchunzi-Xie/AOMSDA.git. Ministry of Education (MOE) This work is supported by Ministry of Education, Republic of Singapore, Tier 1 Grant. 2022-06-24T07:03:30Z 2022-06-24T07:03:30Z 2022 Journal Article Xie, R. & Pratama, M. (2022). Automatic online multi-source domain adaptation. Information Sciences, 582, 480-494. https://dx.doi.org/10.1016/j.ins.2021.09.031 0020-0255 https://hdl.handle.net/10356/159517 10.1016/j.ins.2021.09.031 2-s2.0-85116042271 582 480 494 en Information Sciences © 2021 Elsevier Inc. All rights reserved. |
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Engineering::Computer science and engineering Evolving Intelligent Systems Transfer Learning Xie, Renchunzi Pratama, Mahardhika Automatic online multi-source domain adaptation |
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Knowledge transfer across several streaming processes remain challenging problem not only because of different distributions of each stream but also because of rapidly changing and never-ending environments of data streams. Albeit growing research achievements in this area, most of existing works are developed for a single source domain which limits its resilience to exploit multi-source domains being beneficial to recover from concept drifts quickly and to avoid the negative transfer problem. An online domain adaptation technique under multi-source streaming processes, namely automatic online multi-source domain adaptation (AOMSDA), is proposed in this paper. The online domain adaptation strategy of AOMSDA is formulated under a coupled generative and discriminative approach of denoising autoencoder (DAE) where the central moment discrepancy (CMD)-based regularizer is integrated to handle the existence of multi-source domains thereby taking advantage of complementary information sources. The asynchronous concept drifts taking place at different time periods are addressed by a self-organizing structure and a node re-weighting strategy. Our numerical study demonstrates that AOMSDA is capable of outperforming its counterparts in 5 of 8 study cases while the ablation study depicts the advantage of each learning component. In addition, AOMSDA is general for any number of source streams. The source code of AOMSDA is shared publicly in https://github.com/Renchunzi-Xie/AOMSDA.git. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Xie, Renchunzi Pratama, Mahardhika |
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Article |
author |
Xie, Renchunzi Pratama, Mahardhika |
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Xie, Renchunzi |
title |
Automatic online multi-source domain adaptation |
title_short |
Automatic online multi-source domain adaptation |
title_full |
Automatic online multi-source domain adaptation |
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Automatic online multi-source domain adaptation |
title_full_unstemmed |
Automatic online multi-source domain adaptation |
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automatic online multi-source domain adaptation |
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2022 |
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https://hdl.handle.net/10356/159517 |
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1736856374835412992 |