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Published in: Knowledge and Information Systems 4/2024

02-01-2024 | Regular paper

Optimized neural attention mechanism for aspect-based sentiment analysis framework with optimal polarity-based weighted features

Authors: Mekala Ramasamy, Mohanraj Elangovan

Published in: Knowledge and Information Systems | Issue 4/2024

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Abstract

In recent years, sentimental analysis has been broadly investigated to extract information to identify whether it is positive, negative or neutral. Sentimental analysis can be broadly performed in social media content, survey response and review. Still, it faces issues while detecting and analyzing social media content. Moreover, a social media network contains indirect sentiments and natural language ambiguities make it complicated to classify the words. Thus, the aspect-based sentiment analysis (ABSA) is emerged to develop explicating extraction methods by utilizing the syntactic parsers to make use of the relation among sentiments and aspects terms. Along with this extraction method, the word embedding is performed through Word2Vec methods to attain a low-dimensional vector depiction of text, which could not capture valuable information. Thus, it aims to design a novel ABSA model using the optimized neural network along with optimal text feature extraction. Initially, various data is collected through the benchmark dataset are given to the image pre-processing. Then, it might undergo different techniques like stemming, stop word removal as well as punctuation removal. Then, the preprocessed data are further given into the feature extraction phase to attain adequate extracted aspects. Then, it further undergoes for deep feature extraction stage, where the text conventional neural network and Glove embedding are utilized to obtain the deep features. Further, the feature concatenation is done to attain the optimization for polarity-based weighted features utilized by the enhanced hybrid optimization algorithm called hybrid Chameleon rat swarm optimization (HCRSO) for improving the performance in sentiment analysis. The optimal features are selected by the HCRSO that provides the polarity-based-weight features; thus, it separates the polarity, and the weighted features are occurred by multiplying the weight with polarities. Especially, the optimized features of polarity-based weighted features and also the parameters of epochs and hidden neuron count of neural attention mechanism-based long short-term network (NAM-LSTM) are optimized using the HCRSO algorithm. The weighted feature is applied by incorporating the NAM-LSTM and proposed HCRSO algorithm for improving the model efficiency. The empirical outcome of the recommended method shows 94% and 93% regarding accuracy and specificity. Thus, the experimental outcomes of the proposed ABSA model reveal the model’s efficiency while validating with other conventional approaches.

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Literature
1.
go back to reference Bie Y, Yang Y (2021) A multitask multiview neural network for end-to-end aspect-based sentiment analysis. Big Data Min Anal 4(3):195–207CrossRef Bie Y, Yang Y (2021) A multitask multiview neural network for end-to-end aspect-based sentiment analysis. Big Data Min Anal 4(3):195–207CrossRef
2.
go back to reference Zhang B, Li X, Xu X, Leung K-C, Chen Z, Ye Y (2020) Knowledge guided capsule attention network for aspect-based sentiment analysis. IEEE/ACM Trans Audio Speech Lang Process 28:2538–2551CrossRef Zhang B, Li X, Xu X, Leung K-C, Chen Z, Ye Y (2020) Knowledge guided capsule attention network for aspect-based sentiment analysis. IEEE/ACM Trans Audio Speech Lang Process 28:2538–2551CrossRef
3.
go back to reference Zhao N, Gao H, Wen X, Li H (2021) Combination of convolutional neural network and gated recurrent unit for aspect-based sentiment analysis. IEEE Access 9:15561–15569CrossRef Zhao N, Gao H, Wen X, Li H (2021) Combination of convolutional neural network and gated recurrent unit for aspect-based sentiment analysis. IEEE Access 9:15561–15569CrossRef
4.
go back to reference Che W, Zhao Y, Guo H, Su Z, Liu T (2015) Sentence compression for aspect-based sentiment analysis. IEEE/ACM Trans Audio Speech Lang Process 23(12):2111–2124CrossRef Che W, Zhao Y, Guo H, Su Z, Liu T (2015) Sentence compression for aspect-based sentiment analysis. IEEE/ACM Trans Audio Speech Lang Process 23(12):2111–2124CrossRef
5.
go back to reference Sweidan AH, El-Bendary N, Al-Feel H (2021) Sentence-level aspect-based sentiment analysis for classifying adverse drug reactions (ADRs) using hybrid ontology-XLNET transfer learning. IEEE Access 9:90828–90846CrossRef Sweidan AH, El-Bendary N, Al-Feel H (2021) Sentence-level aspect-based sentiment analysis for classifying adverse drug reactions (ADRs) using hybrid ontology-XLNET transfer learning. IEEE Access 9:90828–90846CrossRef
6.
go back to reference Lin Y, Wang C, Song H, Li Y (2021) Multi-head self-attention transformation networks for aspect-based sentiment analysis. IEEE Access 9:8762–8770CrossRef Lin Y, Wang C, Song H, Li Y (2021) Multi-head self-attention transformation networks for aspect-based sentiment analysis. IEEE Access 9:8762–8770CrossRef
7.
go back to reference Li X, Fu X, Xu G, Yang Y, Wang J, Jin L, Liu Q, Xiang T (2020) Enhancing BERT representation with context-aware embedding for aspect-based sentiment analysis. IEEE Access 8:46868–46876CrossRef Li X, Fu X, Xu G, Yang Y, Wang J, Jin L, Liu Q, Xiang T (2020) Enhancing BERT representation with context-aware embedding for aspect-based sentiment analysis. IEEE Access 8:46868–46876CrossRef
8.
go back to reference Aygün I, Kaya B, Kaya M (2021) Aspect based twitter sentiment analysis on vaccination and vaccine types in Covid-19 pandemic with deep learning. IEEE J Biomed Health Inform 26(5):2360–2369CrossRef Aygün I, Kaya B, Kaya M (2021) Aspect based twitter sentiment analysis on vaccination and vaccine types in Covid-19 pandemic with deep learning. IEEE J Biomed Health Inform 26(5):2360–2369CrossRef
9.
go back to reference Sun J, Han P, Cheng Z, Wu E, Wang W (2020) Transformer based multi-grained attention network for aspect-based sentiment analysis. IEEE Access 8:211152–211163CrossRef Sun J, Han P, Cheng Z, Wu E, Wang W (2020) Transformer based multi-grained attention network for aspect-based sentiment analysis. IEEE Access 8:211152–211163CrossRef
10.
go back to reference Shams M, Khoshavi N, Baraani-Dastjerdi A (2020) LISA: language-independent method for aspect-based sentiment analysis. IEEE Access 8:31034–31044CrossRef Shams M, Khoshavi N, Baraani-Dastjerdi A (2020) LISA: language-independent method for aspect-based sentiment analysis. IEEE Access 8:31034–31044CrossRef
11.
go back to reference Ishaq A, Asghar S, Gillani SA (2020) Aspect-based sentiment analysis using a hybridized approach based on CNN and GA. IEEE Access 8:135499–135512CrossRef Ishaq A, Asghar S, Gillani SA (2020) Aspect-based sentiment analysis using a hybridized approach based on CNN and GA. IEEE Access 8:135499–135512CrossRef
12.
go back to reference Sattar K, Umer Q, Vasbieva DG, Chung S, Latif Z, Lee C (2021) A multi-layer network for aspect-based cross-lingual sentiment classification. IEEE Access 9:133961–133973CrossRef Sattar K, Umer Q, Vasbieva DG, Chung S, Latif Z, Lee C (2021) A multi-layer network for aspect-based cross-lingual sentiment classification. IEEE Access 9:133961–133973CrossRef
13.
go back to reference Meng W, Wei Y, Liu P, Zhu Z, Yin H (2019) Aspect based sentiment analysis with feature enhanced attention CNN-BiLSTM. IEEE Access 7:167240–167249CrossRef Meng W, Wei Y, Liu P, Zhu Z, Yin H (2019) Aspect based sentiment analysis with feature enhanced attention CNN-BiLSTM. IEEE Access 7:167240–167249CrossRef
14.
go back to reference Rida-E-Fatima S, Javed A, Banjar A, Irtaza A, Dawood H, Dawood H, Alamri A (2019) A multi-layer dual attention deep learning model with refined word embeddings for aspect-based sentiment analysis. IEEE Access 7:114795–114807CrossRef Rida-E-Fatima S, Javed A, Banjar A, Irtaza A, Dawood H, Dawood H, Alamri A (2019) A multi-layer dual attention deep learning model with refined word embeddings for aspect-based sentiment analysis. IEEE Access 7:114795–114807CrossRef
15.
go back to reference Boumhidi A, Benlahbib A et al (2021) Cross-platform reputation generation system based on aspect-based sentiment analysis. IEEE Access 10:2515–2531CrossRef Boumhidi A, Benlahbib A et al (2021) Cross-platform reputation generation system based on aspect-based sentiment analysis. IEEE Access 10:2515–2531CrossRef
16.
go back to reference Shim H, Lowet D, Luca S, Vanrumste B (2021) LETS: a label-efficient training scheme for aspect-based sentiment analysis by using a pre-trained language model. IEEE Access 9:115563–115578CrossRef Shim H, Lowet D, Luca S, Vanrumste B (2021) LETS: a label-efficient training scheme for aspect-based sentiment analysis by using a pre-trained language model. IEEE Access 9:115563–115578CrossRef
17.
go back to reference Abas AR, El-Henawy I, Mohamed H, Abdellatif A (2020) Deep learning model for fine-grained aspect-based opinion mining. IEEE Access 8:128845–128855CrossRef Abas AR, El-Henawy I, Mohamed H, Abdellatif A (2020) Deep learning model for fine-grained aspect-based opinion mining. IEEE Access 8:128845–128855CrossRef
18.
go back to reference Onan A, Korukoğlu S (2017) A feature selection model based on genetic rank aggregation for text sentiment classification. J Inf Sci 43(1):25–38CrossRef Onan A, Korukoğlu S (2017) A feature selection model based on genetic rank aggregation for text sentiment classification. J Inf Sci 43(1):25–38CrossRef
19.
go back to reference Onan A (2018) An ensemble scheme based on language function analysis and feature engineering for text genre classification. J Inf Sci 44(1):28–47CrossRef Onan A (2018) An ensemble scheme based on language function analysis and feature engineering for text genre classification. J Inf Sci 44(1):28–47CrossRef
20.
go back to reference Onan A, Korukoğlu S, Bulut H (2016) Ensemble of keyword extraction methods and classifiers in text classification. Expert Syst Appl 57:232–247CrossRef Onan A, Korukoğlu S, Bulut H (2016) Ensemble of keyword extraction methods and classifiers in text classification. Expert Syst Appl 57:232–247CrossRef
21.
go back to reference Onan A, Bal V, Yanar Bayam B (2016) The use of data mining for strategic management: a case study on mining association rules in student information system. Croat J Educ Hrvatski časopis za odgoj i obrazovanje 18(1):41–70 Onan A, Bal V, Yanar Bayam B (2016) The use of data mining for strategic management: a case study on mining association rules in student information system. Croat J Educ Hrvatski časopis za odgoj i obrazovanje 18(1):41–70
22.
go back to reference Onan A, Korukoğlu S, Bulut H (2017) A hybrid ensemble pruning approach based on consensus clustering and multi-objective evolutionary algorithm for sentiment classification. Inf Process Manag 53(4):814–833CrossRef Onan A, Korukoğlu S, Bulut H (2017) A hybrid ensemble pruning approach based on consensus clustering and multi-objective evolutionary algorithm for sentiment classification. Inf Process Manag 53(4):814–833CrossRef
23.
go back to reference Onan A, Toçoğlu MA (2021) A term weighted neural language model and stacked bidirectional LSTM based framework for sarcasm identification. IEEE Access 9:7701–7722CrossRef Onan A, Toçoğlu MA (2021) A term weighted neural language model and stacked bidirectional LSTM based framework for sarcasm identification. IEEE Access 9:7701–7722CrossRef
24.
go back to reference Onan, A.: Biomedical text categorization based on ensemble pruning and optimized topic modelling. Comput Math Methods Med 2018 (2018) Onan, A.: Biomedical text categorization based on ensemble pruning and optimized topic modelling. Comput Math Methods Med 2018 (2018)
25.
go back to reference Onan, A., et al.: Consensus clustering-based undersampling approach to imbalanced learning. Sci Program 2019 (2019) Onan, A., et al.: Consensus clustering-based undersampling approach to imbalanced learning. Sci Program 2019 (2019)
26.
go back to reference Onan A (2020) Mining opinions from instructor evaluation reviews: a deep learning approach. Comput Appl Eng Educ 28(1):117–138CrossRef Onan A (2020) Mining opinions from instructor evaluation reviews: a deep learning approach. Comput Appl Eng Educ 28(1):117–138CrossRef
27.
go back to reference Onan, A.: Deep learning based sentiment analysis on product reviews on twitter. In: Big data innovations and applications: 5th international conference, Innovate-Data 2019, Istanbul, Turkey, August 26–28, 2019, Proceedings 5, pp. 80–91. Springer (2019) Onan, A.: Deep learning based sentiment analysis on product reviews on twitter. In: Big data innovations and applications: 5th international conference, Innovate-Data 2019, Istanbul, Turkey, August 26–28, 2019, Proceedings 5, pp. 80–91. Springer (2019)
28.
go back to reference Onan A (2019) Two-stage topic extraction model for bibliometric data analysis based on word embeddings and clustering. IEEE Access 7:145614–145633CrossRef Onan A (2019) Two-stage topic extraction model for bibliometric data analysis based on word embeddings and clustering. IEEE Access 7:145614–145633CrossRef
29.
go back to reference Rida-E-Fatima S, Javed A, Banjar A, Irtaza A, Dawood H, Dawood H, Alamri A (2019) A multi-layer dual attention deep learning model with refined word embeddings for aspect-based sentiment analysis. IEEE Access 7:114795–114807CrossRef Rida-E-Fatima S, Javed A, Banjar A, Irtaza A, Dawood H, Dawood H, Alamri A (2019) A multi-layer dual attention deep learning model with refined word embeddings for aspect-based sentiment analysis. IEEE Access 7:114795–114807CrossRef
30.
go back to reference Onan A (2021) Sentiment analysis on massive open online course evaluations: a text mining and deep learning approach. Comput Appl Eng Educ 29(3):572–589CrossRef Onan A (2021) Sentiment analysis on massive open online course evaluations: a text mining and deep learning approach. Comput Appl Eng Educ 29(3):572–589CrossRef
31.
go back to reference Onan A (2021) Sentiment analysis on product reviews based on weighted word embeddings and deep neural networks. Concurr Comput Pract Exp 33(23):5909CrossRef Onan A (2021) Sentiment analysis on product reviews based on weighted word embeddings and deep neural networks. Concurr Comput Pract Exp 33(23):5909CrossRef
32.
go back to reference Huang F, Wei K, Weng J, Li Z (2020) Attention-based modality-gated networks for image-text sentiment analysis. ACM Trans Multimedia Comput Commun Appl (TOMM) 16(3):1–19CrossRef Huang F, Wei K, Weng J, Li Z (2020) Attention-based modality-gated networks for image-text sentiment analysis. ACM Trans Multimedia Comput Commun Appl (TOMM) 16(3):1–19CrossRef
33.
go back to reference Li N, Chow C-Y, Zhang J-D (2020) SEML: a semi-supervised multi-task learning framework for aspect-based sentiment analysis. IEEE Access 8:189287–189297CrossRef Li N, Chow C-Y, Zhang J-D (2020) SEML: a semi-supervised multi-task learning framework for aspect-based sentiment analysis. IEEE Access 8:189287–189297CrossRef
34.
go back to reference Jia Z, Bai X, Pang S (2020) Hierarchical gated deep memory network with position-aware for aspect-based sentiment analysis. IEEE Access 8:136340–136347CrossRef Jia Z, Bai X, Pang S (2020) Hierarchical gated deep memory network with position-aware for aspect-based sentiment analysis. IEEE Access 8:136340–136347CrossRef
35.
go back to reference Su J, Yu S, Luo D (2020) Enhancing aspect-based sentiment analysis with capsule network. IEEE Access 8:100551–100561CrossRef Su J, Yu S, Luo D (2020) Enhancing aspect-based sentiment analysis with capsule network. IEEE Access 8:100551–100561CrossRef
36.
go back to reference Pimpalkar A et al (2022) Mbilstmglove: embedding glove knowledge into the corpus using multi-layer bilstm deep learning model for social media sentiment analysis. Expert Syst Appl 203:117581CrossRef Pimpalkar A et al (2022) Mbilstmglove: embedding glove knowledge into the corpus using multi-layer bilstm deep learning model for social media sentiment analysis. Expert Syst Appl 203:117581CrossRef
37.
go back to reference Su J, Tang J, Jiang H, Lu Z, Ge Y, Song L, Xiong D, Sun L, Luo J (2021) Enhanced aspect-based sentiment analysis models with progressive self-supervised attention learning. Artif Intell 296:103477MathSciNetCrossRef Su J, Tang J, Jiang H, Lu Z, Ge Y, Song L, Xiong D, Sun L, Luo J (2021) Enhanced aspect-based sentiment analysis models with progressive self-supervised attention learning. Artif Intell 296:103477MathSciNetCrossRef
38.
go back to reference Srividya K, Sowjanya AM (2021) WITHDRAWN: NA-DLSTM-A neural attention based model for context aware Aspect-based sentiment analysis. Elsevier, New York Srividya K, Sowjanya AM (2021) WITHDRAWN: NA-DLSTM-A neural attention based model for context aware Aspect-based sentiment analysis. Elsevier, New York
39.
go back to reference Mohammad A-S, Hammad MM, Sa’ad A, Saja A-T, Cambria E (2021) Gated recurrent unit with multilingual universal sentence encoder for arabic aspect-based sentiment analysis. Knowl Based Syst 107540 Mohammad A-S, Hammad MM, Sa’ad A, Saja A-T, Cambria E (2021) Gated recurrent unit with multilingual universal sentence encoder for arabic aspect-based sentiment analysis. Knowl Based Syst 107540
40.
go back to reference Onan A (2022) Bidirectional convolutional recurrent neural network architecture with group-wise enhancement mechanism for text sentiment classification. J King Saud Univ Computer Inf Sci 34(5):2098–2117 Onan A (2022) Bidirectional convolutional recurrent neural network architecture with group-wise enhancement mechanism for text sentiment classification. J King Saud Univ Computer Inf Sci 34(5):2098–2117
41.
go back to reference Xu J, Li Z, Huang F, Li C, Philip SY (2020) Visual sentiment analysis with social relations-guided multiattention networks. IEEE Trans Cybern 52(6):4472–4484CrossRef Xu J, Li Z, Huang F, Li C, Philip SY (2020) Visual sentiment analysis with social relations-guided multiattention networks. IEEE Trans Cybern 52(6):4472–4484CrossRef
42.
go back to reference Xu M, Zeng B, Yang H, Chi J, Chen J, Liu H (2022) Combining dynamic local context focus and dependency cluster attention for aspect-level sentiment classification. Neurocomputing 478:49–69CrossRef Xu M, Zeng B, Yang H, Chi J, Chen J, Liu H (2022) Combining dynamic local context focus and dependency cluster attention for aspect-level sentiment classification. Neurocomputing 478:49–69CrossRef
43.
go back to reference Zeng J, Liu T, Jia W, Zhou J (2022) Relation construction for aspect-level sentiment classification. Inf Sci 586:209–223CrossRef Zeng J, Liu T, Jia W, Zhou J (2022) Relation construction for aspect-level sentiment classification. Inf Sci 586:209–223CrossRef
44.
go back to reference Xiao L, Xue Y, Wang H, Hu X, Gu D, Zhu Y (2022) Exploring fine-grained syntactic information for aspect-based sentiment classification with dual graph neural networks. Neurocomputing 471:48–59CrossRef Xiao L, Xue Y, Wang H, Hu X, Gu D, Zhu Y (2022) Exploring fine-grained syntactic information for aspect-based sentiment classification with dual graph neural networks. Neurocomputing 471:48–59CrossRef
45.
go back to reference Albawi S, Mohammed TA, Al-Zawi S (2017) Understanding of a convolutional neural network. In: 2017 international conference on engineering and technology (ICET). IEEE, pp 1–6 Albawi S, Mohammed TA, Al-Zawi S (2017) Understanding of a convolutional neural network. In: 2017 international conference on engineering and technology (ICET). IEEE, pp 1–6
46.
go back to reference Braik MS (2021) Chameleon swarm algorithm: a bio-inspired optimizer for solving engineering design problems. Expert Syst Appl 174:114685CrossRef Braik MS (2021) Chameleon swarm algorithm: a bio-inspired optimizer for solving engineering design problems. Expert Syst Appl 174:114685CrossRef
47.
go back to reference Dhiman G, Garg M, Nagar A, Kumar V, Dehghani M (2021) A novel algorithm for global optimization: rat swarm optimizer. J Ambient Intell Humaniz Comput 12:8457–8482CrossRef Dhiman G, Garg M, Nagar A, Kumar V, Dehghani M (2021) A novel algorithm for global optimization: rat swarm optimizer. J Ambient Intell Humaniz Comput 12:8457–8482CrossRef
48.
go back to reference Kumar Gupta D, Srikanth Reddy K, Shweta, Ekbal A (2015) Pso-asent: Feature selection using particle swarm optimization for aspect based sentiment analysis. In: Natural language processing and information systems: 20th international conference on applications of natural language to information systems, NLDB 2015, Passau, Germany, June 17–19, 2015, Proceedings 20. Springer, pp 220–233 Kumar Gupta D, Srikanth Reddy K, Shweta, Ekbal A (2015) Pso-asent: Feature selection using particle swarm optimization for aspect based sentiment analysis. In: Natural language processing and information systems: 20th international conference on applications of natural language to information systems, NLDB 2015, Passau, Germany, June 17–19, 2015, Proceedings 20. Springer, pp 220–233
49.
go back to reference Dhiman G, Garg M, Nagar A, Kumar V, Dehghani M (2021) A novel algorithm for global optimization: rat swarm optimizer. J Ambient Intell Humaniz Comput 12:8457–8482CrossRef Dhiman G, Garg M, Nagar A, Kumar V, Dehghani M (2021) A novel algorithm for global optimization: rat swarm optimizer. J Ambient Intell Humaniz Comput 12:8457–8482CrossRef
50.
go back to reference Johari NF, Zain AM, Noorfa MH, Udin A (2013) Firefly algorithm for optimization problem. Appl Mech Mater 421:512–517CrossRef Johari NF, Zain AM, Noorfa MH, Udin A (2013) Firefly algorithm for optimization problem. Appl Mech Mater 421:512–517CrossRef
51.
go back to reference Singh NK, Suprabhath KS (2021) Har using bi-directional LSTM with RNN. In: 2021 international conference on emerging techniques in computational intelligence (ICETCI). IEEE, pp 153–158 Singh NK, Suprabhath KS (2021) Har using bi-directional LSTM with RNN. In: 2021 international conference on emerging techniques in computational intelligence (ICETCI). IEEE, pp 153–158
52.
go back to reference Li X, Ma X, Xiao F, Wang F, Zhang S (2020) Application of gated recurrent unit (GRU) neural network for smart batch production prediction. Energies 13(22):6121CrossRef Li X, Ma X, Xiao F, Wang F, Zhang S (2020) Application of gated recurrent unit (GRU) neural network for smart batch production prediction. Energies 13(22):6121CrossRef
53.
go back to reference Graves A, Graves A (2012) Long short-term memory. Supervised sequence labelling with recurrent neural networks, pp 37–45 Graves A, Graves A (2012) Long short-term memory. Supervised sequence labelling with recurrent neural networks, pp 37–45
54.
go back to reference Wang Y, Huang M, Zhu X, Zhao L (2016) Attention-based LSTM for aspect-level sentiment classification. In: Proceedings of the 2016 conference on empirical methods in natural language processing, pp 606–615 Wang Y, Huang M, Zhu X, Zhao L (2016) Attention-based LSTM for aspect-level sentiment classification. In: Proceedings of the 2016 conference on empirical methods in natural language processing, pp 606–615
55.
go back to reference Xing B, Liao L, Song D, Wang J, Zhang F, Wang Z, Huang H (2019) Earlier attention? aspect-aware LSTM for aspect-based sentiment analysis. arXiv preprint arXiv:1905.07719 Xing B, Liao L, Song D, Wang J, Zhang F, Wang Z, Huang H (2019) Earlier attention? aspect-aware LSTM for aspect-based sentiment analysis. arXiv preprint arXiv:​1905.​07719
56.
go back to reference Wang B (2018) Disconnected recurrent neural networks for text categorization. In: Proceedings of the 56th annual meeting of the association for computational linguistics (Volume 1: Long Papers), pp 2311–2320 Wang B (2018) Disconnected recurrent neural networks for text categorization. In: Proceedings of the 56th annual meeting of the association for computational linguistics (Volume 1: Long Papers), pp 2311–2320
57.
go back to reference Johnson R, Zhang T (2017) Deep pyramid convolutional neural networks for text categorization. In: Proceedings of the 55th annual meeting of the association for computational linguistics (Volume 1: Long Papers), pp 562–570 Johnson R, Zhang T (2017) Deep pyramid convolutional neural networks for text categorization. In: Proceedings of the 55th annual meeting of the association for computational linguistics (Volume 1: Long Papers), pp 562–570
58.
go back to reference Li, X., Ming, H.: Stock market prediction using reinforcement learning with sentiment analysis. Int J Cybern Inform 12(1):1–20 (2023) Li, X., Ming, H.: Stock market prediction using reinforcement learning with sentiment analysis. Int J Cybern Inform 12(1):1–20 (2023)
59.
go back to reference Aslan, S., Kızıloluk, S., Sert, E.: Tsa-cnn-aoa: Twitter sentiment analysis using CNN optimized via arithmetic optimization algorithm. Neural Comput Appl 1–18 (2023) Aslan, S., Kızıloluk, S., Sert, E.: Tsa-cnn-aoa: Twitter sentiment analysis using CNN optimized via arithmetic optimization algorithm. Neural Comput Appl 1–18 (2023)
60.
go back to reference Muthulakshmi, V., Shajin, F.H., Dhiviya Rose, J., Rajesh, P.: Generative adversarial networks classifier optimized with water strider algorithm for fake tweets detection. IETE J Res 1–16 (2023) Muthulakshmi, V., Shajin, F.H., Dhiviya Rose, J., Rajesh, P.: Generative adversarial networks classifier optimized with water strider algorithm for fake tweets detection. IETE J Res 1–16 (2023)
61.
go back to reference Shaddeli A, Soleimanian Gharehchopogh F, Masdari M, Solouk V (2022) An improved African vulture optimization algorithm for feature selection problems and its application of sentiment analysis on movie reviews. Big Data Cognit Comput 6(4):104CrossRef Shaddeli A, Soleimanian Gharehchopogh F, Masdari M, Solouk V (2022) An improved African vulture optimization algorithm for feature selection problems and its application of sentiment analysis on movie reviews. Big Data Cognit Comput 6(4):104CrossRef
62.
go back to reference Majumder, N., Poria, S., Gelbukh, A., Akhtar, M.S., Cambria, E., Ekbal, A.: IARM: inter-aspect relation modeling with memory networks in aspect-based sentiment analysis. In: Proceedings of the 2018 conference on empirical methods in natural language processing, pp 3402–3411 (2018) Majumder, N., Poria, S., Gelbukh, A., Akhtar, M.S., Cambria, E., Ekbal, A.: IARM: inter-aspect relation modeling with memory networks in aspect-based sentiment analysis. In: Proceedings of the 2018 conference on empirical methods in natural language processing, pp 3402–3411 (2018)
63.
go back to reference Oh, S., Lee, D., Whang, T., Park, I., Seo, G., Kim, E., Kim, H.: Deep context-and relation-aware learning for aspect-based sentiment analysis. arXiv preprint arXiv:2106.03806 (2021) Oh, S., Lee, D., Whang, T., Park, I., Seo, G., Kim, E., Kim, H.: Deep context-and relation-aware learning for aspect-based sentiment analysis. arXiv preprint arXiv:​2106.​03806 (2021)
Metadata
Title
Optimized neural attention mechanism for aspect-based sentiment analysis framework with optimal polarity-based weighted features
Authors
Mekala Ramasamy
Mohanraj Elangovan
Publication date
02-01-2024
Publisher
Springer London
Published in
Knowledge and Information Systems / Issue 4/2024
Print ISSN: 0219-1377
Electronic ISSN: 0219-3116
DOI
https://doi.org/10.1007/s10115-023-01998-0

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