Developing a Novel Method for Emotion Detection through Natural Language Processing
DOI:
https://doi.org/10.56294/dm2024.222Keywords:
social platforms, sentiment analysis, feature encoding, forecasting, intricate networkAbstract
The analysis of audience emotional responses to textual content is vital across various fields, including politics, entertainment, industry, and research. Sentiment Analysis (SA), a branch of Natural Language Processing (NLP), employs statistical, lexical, and machine learning methods to predict audience emotions—neutral, positive, or negative—in response to diverse social media content. However, a notable research gap persists due to the lack of robust tools capable of quantifying features and independent text essential for assessing primary audience emotions within large-scale social media datasets. This study addresses the gap by introducing a novel approach to analyse the relationships within social media texts and evaluate audience emotions. A Dense Layer Graph (DLG-TF) model is proposed for textual feature analysis, enabling the exploration of intricate interconnections in the media landscape and enhancing emotion prediction capabilities. Social media data is processed using advanced convolutional network models, with emotion predictions derived from analysing textual features. Experimental results reveal that the DLG-TF model outperforms traditional emotion prediction techniques by delivering more accurate predictions across a broader emotional spectrum. Performance metrics, including accuracy, precision, recall, and F-measure, are assessed and compared against existing methodologies, demonstrating the superiority of the proposed model in utilizing social media datasets effectively
References
[1] A. Longa, G. Cencetti, B. Lepri, and A. Passerini, ‘‘An efficient procedure 820 for mining egocentric temporal motifs,’’ Data Mining Knowl. Discovery, 821 vol. 36, no. 1, pp. 355–378, Jan, 2022.
[2] A. Ficara, L. Cavallaro, F. Curreri, G. Fiumara, P. De Meo, O. Bagdasar, 834 W. Song, and A.Liotta, ‘‘Criminal networks analysis in missing data 835 scenarios through graph distances,’’ PLoSONE, vol. 16, no. 8, Aug. 2021, 836 Art. no. e0255067.
[3] L. G. Singh, A. Mitra, and S. R. Singh, ‘‘Sentiment analysis of tweets 848 using heterogeneous multi-layer network representation and embedding,’’ 849 in Proc. Conf. Empirical Methods Natural Lang. Process. (EMNLP), 2020, 850 pp. 8932–8946.
[4] O. Habimana, Y. Li, R. Li, X. Gu, and G. Yu, ‘‘Sentiment analysis using 864 deep learning approaches: An overview,’’ Sci. China Inf. Sci., vol. 63, no. 1, 865 pp. 1–36, 2020.
[5] J. Devlin, M.W. Chang, K. Lee, and K. Toutanova, ‘‘BERT: Pre-training 875 of deep bidirectional transformers for language understanding,’’ 2018, 876 arXiv:1810.04805.
[6] Poria S et al (2019) Emotion recognition in conversation: research challenges, datasets, and recent advances. IEEE Access 7(2019):100943–100953
[7] Yu L, Zhou K, Huang Y (2014) A comparative study on support vector machines classifiers for emotional speech recognition. Immune Comput (IC) 2(1), March 2014
[8] Bharate VD et al (2016) Human emotions recognition using adaptive sublayer compensation and various feature extraction mechanism. In: IEEE WiSPNET, 2016
[9] Acheampong FA, Wenyu C, Nunoo-Mensah H (2020) Text-based emotion detection: advances, challenges, and opportunities. Eng Rep 2(7):e12189
[10] Jaiswal A, Raju AK, Deb S (2020) Facial emotion detection using deep learning. In: 2020 International conference for emerging technology (INCET). IEEE, pp 1–5
[11] Chopade C. R. Text based emotion recognition: a survey. International Journal of Science and Research . 2015;2(6):409–414.
[12] Alnuaim A. A., Zakariah M., Shukla P. K., et al. Human-computer interaction for recognizing speech emotions using multilayer perceptron classifier. Journal of Healthcare Engineering . 2022;2022:12.
[13] Singh D., Kumar V., Kaur M., Lee M. Y., Lee H.-N. Screening of COVID-19 suspected subjects using multi-crossover genetic algorithm based dense convolutional neural network. IEEE Access . 2021;9:142566–142580.
[14] Xu P., Madotto A., Wu C. S., Park J. H., Fung P. Emo2vec: learning generalized emotion representation by multi-task training. 2018.
[15] Hasan M., Rundensteiner E., Agu E. Automatic emotion detection in text streams by analyzing twitter data. International Journal of Data Science and Analytics . 2019;7(1):35–51. doi: 10.1007/s41060-018-0096-z.
[16] Rodriguez A., Chen Y. L., Argueta C. FADOHS: framework for detection and integration of unstructured data of hate speech on facebook using sentiment and emotion analysis. IEEE Access . 2022;10:22400–22419.
[17] Navarrete A. S., Martinez-Araneda C., Vidal-Castro C., Rubio-Manzano C. A novel approach to the creation of a labelling lexicon for improving emotion analysis in text. The Electronic Library . 2021;39
[18] Chen J. X., Jiang D. M., Zhang Y. N. A hierarchical bidirectional GRU model with attention for EEG-based emotion classification. IEEE Access . 2019;7:118530–118540. doi: 10.1109/access.2019.2936817.
[19] Alnuaim A. A., Zakariah M., Alhadlaq A., et al. Human-computer interaction with detection of speaker emotions using convolution neural networks. Computational Intelligence and Neuroscience . 2022;2022:p. 16.
[20] Acharya D. Comparative analysis of feature extraction technique on EEG-based dataset. In: Tiwari A., Ahuja K., Yadav A., Bansal J. C., Deep K., Nagar A. K., editors. Soft Computing for Problem Solving . Vol. 1392. Singapore: Springer; 2021.
[21] Onyema E. M., Shukla P. K., Dalal S., Mathur M. N., Zakariah M., Tiwari B. Enhancement of patient facial recognition through deep learning algorithm: ConvNet. Journal of Healthcare Engineering . 2021;2021:8.
[22] Alotaibi F. M. Classifying text-based emotions using logistic regression. VAWKUM Transactions on Computer Sciences . 2019;7(1):31–37.
[23] Alnuaim A. A., Zakariah M., Shashidhar C., et al. Speaker gender recognition based on deep neural networks and ResNet50. Wireless Communications and Mobile Computing . 2022;2022:13.
[24] Pathak Y., Arya P. K., Arya K. V. Deep bidirectional classification model for COVID-19 disease infected patients. IEEE/ACM Transactions on Computational Biology and Bioinformatics . 2021;18(4):1234–1241.
[25] Sherubha, “Graph Based Event Measurement for Analyzing Distributed Anomalies in Sensor Networks”, Sådhanå(Springer), 45:212, https://doi.org/10.1007/s12046-020-01451-w
[26] Sherubha, “An Efficient Network Threat Detection and Classification Method using ANP-MVPS Algorithm in Wireless Sensor Networks”, International Journal of Innovative Technology and Exploring Engineering (IJITEE), ISSN: 2278-3075, Volume-8 Issue-11, September 2019
[27] Sherubha, “An Efficient Intrusion Detection and Authentication Mechanism for Detecting Clone Attack in Wireless Sensor Networks”, Journal of Advanced Research in Dynamical and Control Systems (JARDCS), Volume 11, issue 5, Pg No. 55-68
[28] Yin, W.; Kann, K.; Yu, M.; Schütze, H. Comparative study of CNN and RNN for natural language processing. arXiv 2017, arXiv:1702.01923.
[29] Chung, J.; Gulcehre, C.; Cho, K.; Bengio, Y. Empirical evaluation of gated recurrent neural networks on sequence modeling. arXiv 2014, arXiv:1412.3555.
[30] Liu, J.; Wu, G.; Luo, Y.; Qiu, S.; Yang, S.; Li, W.; Bi, Y. EEG-based emotion classification using a deep neural network and sparse autoencoder. Front. Syst. Neurosci. 2020, 14, 43.
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