Open Access

Modeling of Optimal Fully Connected Deep Neural Network based Sentiment Analysis on Social Networking Data

   | Dec 15, 2022

Cite

Agüero-Torales, M.M., Salas, J.I.A. and López-Herrera, A.G., 2021. Deep learning and multilingual sentiment analysis on social media data: An overview. Applied Soft Computing, p.107373. Search in Google Scholar

S.L. Lo, E. Cambria, R. Chiong, D. Cornforth, Multilingual sentiment analysis: from formal to informal and scarce resource languages, Artif. Intell. Rev. 48 (4) (2017) 499–527. Search in Google Scholar

D. Tang, B. Qin, T. Liu, Deep learning for sentiment analysis: successful approaches and future challenges, Wiley Interdiscip. Rev.: Data Min. Knowl. Discov. 5 (6) (2015) 292–303. Search in Google Scholar

P. Singhal, P. Bhattacharyya, Sentiment Analysis and Deep Learning: A Survey, Center for Indian Language Technology, Indian Institute of Technology, Bombay, 2016. Search in Google Scholar

D. Vilares, Compositional Language Processing for Multilingual Sentiment Analysis (Ph.D. thesis), Universidade da Coruña, 2017. Search in Google Scholar

B. Liu, Sentiment analysis and opinion mining, Synth. Lect. Human Lang. Technol. 5 (1) (2012) 1–167. Search in Google Scholar

S. Wang, C.D. Manning, Baselines and bigrams: Simple, good sentiment and topic classification, in: Proc. of the 50th Annual Meeting of the ACL: Short Papers, Vol. 2, ACL, 2012, pp. 90–94 Search in Google Scholar

Y. Kim, Convolutional neural networks for sentence classification, in: Proc. of the 2014 Conf. on Empirical Methods in NLP, EMNLP, ACL, Doha, Qatar, 2014, pp. 1746–1751. Search in Google Scholar

L.M. Rojas-Barahona, Deep learning for sentiment analysis, Lang. Linguist. Compass 10 (12) (2016) 701–719. Search in Google Scholar

Abd El-Jawad, M.H., Hodhod, R. and Omar, Y.M., 2018, December. Sentiment analysis of social media networks using machine learning. In 2018 14th international computer engineering conference (ICENCO) (pp. 174-176). IEEE. Search in Google Scholar

Nemes, L. and Kiss, A., 2021. Social media sentiment analysis based on COVID-19. Journal of Information and Telecommunication, 5(1), pp.1-15. Search in Google Scholar

Yoo, S., Song, J. and Jeong, O., 2018. Social media contents based sentiment analysis and prediction system. Expert Systems with Applications, 105, pp.102-111. Search in Google Scholar

Vashishtha, S. and Susan, S., 2019. Fuzzy rule based unsupervised sentiment analysis from social media posts. Expert Systems with Applications, 138, p.112834. Search in Google Scholar

Asif, M., Ishtiaq, A., Ahmad, H., Aljuaid, H. and Shah, J., 2020. Sentiment analysis of extremism in social media from textual information. Telematics and Informatics, 48, p.101345. Search in Google Scholar

Rogers, A., Romanov, A., Rumshisky, A., Volkova, S., Gronas, M. and Gribov, A., 2018, August. RuSentiment: An enriched sentiment analysis dataset for social media in Russian. In Proceedings of the 27th international conference on computational linguistics (pp. 755-763). Search in Google Scholar

Jeong, B., Yoon, J. and Lee, J.M., 2019. Social media mining for product planning: A product opportunity mining approach based on topic modeling and sentiment analysis. International Journal of Information Management, 48, pp.280-290. Search in Google Scholar

Alessandro, C., Daniela, M., Michele, M., Andrea, T., Gianmarco, G., Massimo, S., Orazio, Z., Fabio, G. and Giuseppe, T., 2012. Glove port technique for transanal endoscopic microsurgery. International journal of surgical oncology, 2012. Search in Google Scholar

Bi, L., Hu, G., Raza, M.M., Kandel, Y., Leandro, L. and Mueller, D., 2020. A Gated Recurrent Units (GRU)-Based Model for Early Detection of Soybean Sudden Death Syndrome through Time-Series Satellite Imagery. Remote Sensing, 12(21), p.3621. Search in Google Scholar

Ramesh, S. and Vydeki, D., 2020. Recognition and classification of paddy leaf diseases using Optimized Deep Neural network with Jaya algorithm. Information processing in agriculture, 7(2), pp.249-260. Search in Google Scholar

Ewees, A.A., Al-qaness, M.A. and Abd Elaziz, M., 2021. Enhanced salp swarm algorithm based on firefly algorithm for unrelated parallel machine scheduling with setup times. Applied Mathematical Modelling, 94, pp.285-305. Search in Google Scholar

Abualigah, L., Shehab, M., Alshinwan, M. and Alabool, H., 2020. Salp swarm algorithm: a comprehensive survey. Neural Computing and Applications, 32(15), pp.11195-11215. Search in Google Scholar

Zhang J, Wang Z, Luo X (2018) Parameter estimation for soil water retention curve using the salp swarm algorithm. Water 10:815 Search in Google Scholar