State of the art: A review of sentiment analysis based on sequential transfer learning

Recently, sequential transfer learning emerged as a modern technique for applying the ``pretrain then fine-tune'' paradigm to leverage existing knowledge to improve the performance of various downstream NLP tasks, with no exception of sentiment analysis. Previous pieces of literature mostl...

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Main Authors: Chan, Jireh Yi-Le, Bea, Khean Thye, Leow, Steven Mun Hong, Phoong, Seuk Wai, Cheng, Wai Khuen
Format: Article
Published: Springer 2023
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Online Access:http://eprints.um.edu.my/39569/
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Institution: Universiti Malaya
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spelling my.um.eprints.395692024-11-01T08:45:52Z http://eprints.um.edu.my/39569/ State of the art: A review of sentiment analysis based on sequential transfer learning Chan, Jireh Yi-Le Bea, Khean Thye Leow, Steven Mun Hong Phoong, Seuk Wai Cheng, Wai Khuen H Social Sciences (General) HB Economic Theory HC Economic History and Conditions Recently, sequential transfer learning emerged as a modern technique for applying the ``pretrain then fine-tune'' paradigm to leverage existing knowledge to improve the performance of various downstream NLP tasks, with no exception of sentiment analysis. Previous pieces of literature mostly focus on reviewing the application of various deep learning models to sentiment analysis. However, supervised deep learning methods are known to be data hungry, but insufficient training data in practice may cause the application to be impractical. To this end, sequential transfer learning provided a solution to alleviate the training bottleneck issues of data scarcity and facilitate sentiment analysis application. This study aims to discuss the background of sequential transfer learning, review the evolution of pretrained models, extend the literature with the application of sequential transfer learning to different sentiment analysis tasks (aspect-based sentiment analysis, multimodal sentiment analysis, sarcasm detection, cross-domain sentiment classification, multilingual sentiment analysis, emotion detection) and suggest future research directions on model compression, effective knowledge adaptation techniques, neutrality detection and ambivalence handling tasks. Springer 2023-01 Article PeerReviewed Chan, Jireh Yi-Le and Bea, Khean Thye and Leow, Steven Mun Hong and Phoong, Seuk Wai and Cheng, Wai Khuen (2023) State of the art: A review of sentiment analysis based on sequential transfer learning. Artificial Intelligence Review, 56 (1). pp. 749-780. ISSN 0269-2821, DOI https://doi.org/10.1007/s10462-022-10183-8 <https://doi.org/10.1007/s10462-022-10183-8>. 10.1007/s10462-022-10183-8
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic H Social Sciences (General)
HB Economic Theory
HC Economic History and Conditions
spellingShingle H Social Sciences (General)
HB Economic Theory
HC Economic History and Conditions
Chan, Jireh Yi-Le
Bea, Khean Thye
Leow, Steven Mun Hong
Phoong, Seuk Wai
Cheng, Wai Khuen
State of the art: A review of sentiment analysis based on sequential transfer learning
description Recently, sequential transfer learning emerged as a modern technique for applying the ``pretrain then fine-tune'' paradigm to leverage existing knowledge to improve the performance of various downstream NLP tasks, with no exception of sentiment analysis. Previous pieces of literature mostly focus on reviewing the application of various deep learning models to sentiment analysis. However, supervised deep learning methods are known to be data hungry, but insufficient training data in practice may cause the application to be impractical. To this end, sequential transfer learning provided a solution to alleviate the training bottleneck issues of data scarcity and facilitate sentiment analysis application. This study aims to discuss the background of sequential transfer learning, review the evolution of pretrained models, extend the literature with the application of sequential transfer learning to different sentiment analysis tasks (aspect-based sentiment analysis, multimodal sentiment analysis, sarcasm detection, cross-domain sentiment classification, multilingual sentiment analysis, emotion detection) and suggest future research directions on model compression, effective knowledge adaptation techniques, neutrality detection and ambivalence handling tasks.
format Article
author Chan, Jireh Yi-Le
Bea, Khean Thye
Leow, Steven Mun Hong
Phoong, Seuk Wai
Cheng, Wai Khuen
author_facet Chan, Jireh Yi-Le
Bea, Khean Thye
Leow, Steven Mun Hong
Phoong, Seuk Wai
Cheng, Wai Khuen
author_sort Chan, Jireh Yi-Le
title State of the art: A review of sentiment analysis based on sequential transfer learning
title_short State of the art: A review of sentiment analysis based on sequential transfer learning
title_full State of the art: A review of sentiment analysis based on sequential transfer learning
title_fullStr State of the art: A review of sentiment analysis based on sequential transfer learning
title_full_unstemmed State of the art: A review of sentiment analysis based on sequential transfer learning
title_sort state of the art: a review of sentiment analysis based on sequential transfer learning
publisher Springer
publishDate 2023
url http://eprints.um.edu.my/39569/
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