What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules
Aspect-based sentiment analysis enables the extraction of fine-grained information, as it connects specific aspects that appear in reviews with a polarity. Although we detect that the information from these algorithms is very accurate at local level, it does not contribute to obtain an overall under...
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sg-ntu-dr.10356-1542562021-12-31T13:35:17Z What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules Valdivia, A. Martínez-Cámara, E. Chaturvedi, Iti Luzón, M. V. Cambria, Erik Ong, Yew-Soon Herrera, F. School of Computer Science and Engineering Engineering::Computer science and engineering Sentiment Analysis Deep Learning Aspect-based sentiment analysis enables the extraction of fine-grained information, as it connects specific aspects that appear in reviews with a polarity. Although we detect that the information from these algorithms is very accurate at local level, it does not contribute to obtain an overall understanding of reviews. To fill this gap, we propose a methodology to portray opinions through the most relevant associations between aspects and polarities. Our methodology combines three off-the-shelf algorithms: (1) deep learning for extracting aspects, (2) clustering for joining together similar aspects, and (3) subgroup discovery for obtaining descriptive rules that summarize the polarity information of set of reviews. Concretely, we aim at depicting negative opinions from three cultural monuments in order to detect those features that need to be improved. Experimental results show that our approach clearly gives an overview of negative aspects, therefore it will be able to attain a better comprehension of opinions. We would like to thank the reviewers for their thoughtful comments and eforts towards improving our manuscript. This research work was supported by the TIN2017-89517-P project from the Spanish Government. Eugenio Martínez-Cámara was supported by the Juan de la Cierva Formación Programme (FJCI-2016- 28353) also from the Spanish Government. 2021-12-16T06:43:35Z 2021-12-16T06:43:35Z 2020 Journal Article Valdivia, A., Martínez-Cámara, E., Chaturvedi, I., Luzón, M. V., Cambria, E., Ong, Y. & Herrera, F. (2020). What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules. Journal of Ambient Intelligence and Humanized Computing, 11(1), 39-52. https://dx.doi.org/10.1007/s12652-018-1150-3 1868-5137 https://hdl.handle.net/10356/154256 10.1007/s12652-018-1150-3 2-s2.0-85058975565 1 11 39 52 en Journal of Ambient Intelligence and Humanized Computing © 2018 Springer-Verlag GmbH Germany, part of Springer Nature. All rights reserved. |
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Engineering::Computer science and engineering Sentiment Analysis Deep Learning Valdivia, A. Martínez-Cámara, E. Chaturvedi, Iti Luzón, M. V. Cambria, Erik Ong, Yew-Soon Herrera, F. What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules |
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Aspect-based sentiment analysis enables the extraction of fine-grained information, as it connects specific aspects that appear in reviews with a polarity. Although we detect that the information from these algorithms is very accurate at local level, it does not contribute to obtain an overall understanding of reviews. To fill this gap, we propose a methodology to portray opinions through the most relevant associations between aspects and polarities. Our methodology combines three off-the-shelf algorithms: (1) deep learning for extracting aspects, (2) clustering for joining together similar aspects, and (3) subgroup discovery for obtaining descriptive rules that summarize the polarity information of set of reviews. Concretely, we aim at depicting negative opinions from three cultural monuments in order to detect those features that need to be improved. Experimental results show that our approach clearly gives an overview of negative aspects, therefore it will be able to attain a better comprehension of opinions. |
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School of Computer Science and Engineering |
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School of Computer Science and Engineering Valdivia, A. Martínez-Cámara, E. Chaturvedi, Iti Luzón, M. V. Cambria, Erik Ong, Yew-Soon Herrera, F. |
format |
Article |
author |
Valdivia, A. Martínez-Cámara, E. Chaturvedi, Iti Luzón, M. V. Cambria, Erik Ong, Yew-Soon Herrera, F. |
author_sort |
Valdivia, A. |
title |
What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules |
title_short |
What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules |
title_full |
What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules |
title_fullStr |
What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules |
title_full_unstemmed |
What do people think about this monument? Understanding negative reviews via deep learning, clustering and descriptive rules |
title_sort |
what do people think about this monument? understanding negative reviews via deep learning, clustering and descriptive rules |
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2021 |
url |
https://hdl.handle.net/10356/154256 |
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1722355346556583936 |