A deep learning approach in predicting products' sentiment ratings: A comparative analysis
We present a benchmark comparison of several deep learning models including Convolutional Neural Networks, Recurrent Neural Network and Bi-directional Long Short Term Memory, assessed based on various word embedding approaches, including the Bi-directional Encoder Representations from Transformers (...
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my.um.eprints.424142023-10-09T08:56:30Z http://eprints.um.edu.my/42414/ A deep learning approach in predicting products' sentiment ratings: A comparative analysis Balakrishnan, Vimala Shi, Zhongliang Law, Chuan Liang Lim, Regine Teh, Lee Leng Fan, Yue QA75 Electronic computers. Computer science We present a benchmark comparison of several deep learning models including Convolutional Neural Networks, Recurrent Neural Network and Bi-directional Long Short Term Memory, assessed based on various word embedding approaches, including the Bi-directional Encoder Representations from Transformers (BERT) and its variants, FastText and Word2Vec. Data augmentation was administered using the Easy Data Augmentation approach resulting in two datasets (original versus augmented). All the models were assessed in two setups, namely 5-class versus 3-class (i.e., compressed version). Findings show the best prediction models were Neural Network-based using Word2Vec, with CNN-RNN-Bi-LSTM producing the highest accuracy (96%) and F-score (91.1%). Individually, RNN was the best model with an accuracy of 87.5% and F-score of 83.5%, while RoBERTa had the best F-score of 73.1%. The study shows that deep learning is better for analyzing the sentiments within the text compared to supervised machine learning and provides a direction for future work and research. Springer 2022-04 Article PeerReviewed Balakrishnan, Vimala and Shi, Zhongliang and Law, Chuan Liang and Lim, Regine and Teh, Lee Leng and Fan, Yue (2022) A deep learning approach in predicting products' sentiment ratings: A comparative analysis. Journal of Supercomputing, 78 (5). pp. 7206-7226. ISSN 0920-8542, DOI https://doi.org/10.1007/s11227-021-04169-6 <https://doi.org/10.1007/s11227-021-04169-6>. 10.1007/s11227-021-04169-6 |
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QA75 Electronic computers. Computer science Balakrishnan, Vimala Shi, Zhongliang Law, Chuan Liang Lim, Regine Teh, Lee Leng Fan, Yue A deep learning approach in predicting products' sentiment ratings: A comparative analysis |
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We present a benchmark comparison of several deep learning models including Convolutional Neural Networks, Recurrent Neural Network and Bi-directional Long Short Term Memory, assessed based on various word embedding approaches, including the Bi-directional Encoder Representations from Transformers (BERT) and its variants, FastText and Word2Vec. Data augmentation was administered using the Easy Data Augmentation approach resulting in two datasets (original versus augmented). All the models were assessed in two setups, namely 5-class versus 3-class (i.e., compressed version). Findings show the best prediction models were Neural Network-based using Word2Vec, with CNN-RNN-Bi-LSTM producing the highest accuracy (96%) and F-score (91.1%). Individually, RNN was the best model with an accuracy of 87.5% and F-score of 83.5%, while RoBERTa had the best F-score of 73.1%. The study shows that deep learning is better for analyzing the sentiments within the text compared to supervised machine learning and provides a direction for future work and research. |
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Article |
author |
Balakrishnan, Vimala Shi, Zhongliang Law, Chuan Liang Lim, Regine Teh, Lee Leng Fan, Yue |
author_facet |
Balakrishnan, Vimala Shi, Zhongliang Law, Chuan Liang Lim, Regine Teh, Lee Leng Fan, Yue |
author_sort |
Balakrishnan, Vimala |
title |
A deep learning approach in predicting products' sentiment ratings: A comparative analysis |
title_short |
A deep learning approach in predicting products' sentiment ratings: A comparative analysis |
title_full |
A deep learning approach in predicting products' sentiment ratings: A comparative analysis |
title_fullStr |
A deep learning approach in predicting products' sentiment ratings: A comparative analysis |
title_full_unstemmed |
A deep learning approach in predicting products' sentiment ratings: A comparative analysis |
title_sort |
deep learning approach in predicting products' sentiment ratings: a comparative analysis |
publisher |
Springer |
publishDate |
2022 |
url |
http://eprints.um.edu.my/42414/ |
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1781704640422739968 |