ACDC: online unsupervised cross-domain adaptation
We consider the problem of online unsupervised cross-domain adaptation, where two independent but related data streams with different feature spaces – a fully labeled source stream and an unlabeled target stream – are learned together. Unique characteristics and challenges such as covariate shift, a...
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sg-ntu-dr.10356-1704612023-09-12T07:57:47Z ACDC: online unsupervised cross-domain adaptation de Carvalho, Marcus Pratama, Mahardhika Zhang, Jie Yee, Edward Yapp Kien School of Computer Science and Engineering Engineering::Computer science and engineering Stream Learning Multistream Learning We consider the problem of online unsupervised cross-domain adaptation, where two independent but related data streams with different feature spaces – a fully labeled source stream and an unlabeled target stream – are learned together. Unique characteristics and challenges such as covariate shift, asynchronous concept drifts, and contrasting data throughput arise. We propose ACDC, an adversarial unsupervised domain adaptation framework that handles multiple data streams with a complete self-evolving neural network structure that reacts to these defiances. ACDC encapsulates three modules into a single model: A denoising autoencoder that extracts features, an adversarial module that performs domain conversion, and an estimator that learns the source stream and predicts the target stream. ACDC is a flexible and expandable framework with little hyper-parameter tunability. Our experimental results under the prequential test-then-train protocol indicate an improvement in target accuracy over the baseline methods, achieving more than a 10% increase in some cases. National Research Foundation (NRF) This work is financially supported by National Research Foundation, Republic of Singapore under IAFPP in the AME domain (contract no.: A19C1A0018). 2023-09-12T07:57:47Z 2023-09-12T07:57:47Z 2022 Journal Article de Carvalho, M., Pratama, M., Zhang, J. & Yee, E. Y. K. (2022). ACDC: online unsupervised cross-domain adaptation. Knowledge-Based Systems, 253, 109486-. https://dx.doi.org/10.1016/j.knosys.2022.109486 0950-7051 https://hdl.handle.net/10356/170461 10.1016/j.knosys.2022.109486 2-s2.0-85136141425 253 109486 en A19C1A0018 Knowledge-Based Systems © 2022 Elsevier B.V. All rights reserved. |
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Engineering::Computer science and engineering Stream Learning Multistream Learning de Carvalho, Marcus Pratama, Mahardhika Zhang, Jie Yee, Edward Yapp Kien ACDC: online unsupervised cross-domain adaptation |
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We consider the problem of online unsupervised cross-domain adaptation, where two independent but related data streams with different feature spaces – a fully labeled source stream and an unlabeled target stream – are learned together. Unique characteristics and challenges such as covariate shift, asynchronous concept drifts, and contrasting data throughput arise. We propose ACDC, an adversarial unsupervised domain adaptation framework that handles multiple data streams with a complete self-evolving neural network structure that reacts to these defiances. ACDC encapsulates three modules into a single model: A denoising autoencoder that extracts features, an adversarial module that performs domain conversion, and an estimator that learns the source stream and predicts the target stream. ACDC is a flexible and expandable framework with little hyper-parameter tunability. Our experimental results under the prequential test-then-train protocol indicate an improvement in target accuracy over the baseline methods, achieving more than a 10% increase in some cases. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering de Carvalho, Marcus Pratama, Mahardhika Zhang, Jie Yee, Edward Yapp Kien |
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Article |
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de Carvalho, Marcus Pratama, Mahardhika Zhang, Jie Yee, Edward Yapp Kien |
author_sort |
de Carvalho, Marcus |
title |
ACDC: online unsupervised cross-domain adaptation |
title_short |
ACDC: online unsupervised cross-domain adaptation |
title_full |
ACDC: online unsupervised cross-domain adaptation |
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ACDC: online unsupervised cross-domain adaptation |
title_full_unstemmed |
ACDC: online unsupervised cross-domain adaptation |
title_sort |
acdc: online unsupervised cross-domain adaptation |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/170461 |
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1779156773802868736 |