[1] Darshan, K., Jerusha, S., Manjunatha, S., Prashant, K., & Shivashankara, N. (2024). NLP-Powered Sentiment Analysis on the Twitter. Saudi Journal of Engineering and Technology, 9, 1-11.Kavvadias, Alexandros, and Theodore Kotsilieris. "Understanding the Role of Demographic and Psychological Factors in Users’ Susceptibility to Phishing Emails: A Review." Applied Sciences 15.4 (2025): 2236.
[2] Balli, C., Guzel, M. S., Bostanci, E., & Mishra, A. (2022). Sentimental analysis of Twitter users from Turkish content with natural language processing. Computational Intelligence and Neuroscience, 2022(1), 2455160
[3] Shamrat, F. M. J. M., Chakraborty, S., Imran, M. M., Muna, J. N., Billah, M. M., Das, P., & Rahman, O. M. (2021). Sentiment analysis on twitter tweets about COVID-19 vaccines using NLP and supervised KNN classification algorithm. Indonesian Journal of Electrical Engineering and Computer Science, 23(1), 463-470
[4] Rosenberg, E., Tarazona, C., Mallor, F., Eivazi, H., Pastor-Escuredo, D., Fuso-Nerini, F., & Vinuesa, R. (2023). Sentiment analysis on Twitter data towards climate action. Results in Engineering, 19, 101287..
[5] Hosgurmath, S., Petli, V., & Jalihal, V. K. (2022). An omicron variant tweeter sentiment analysis using NLP technique. Global Transitions Proceedings, 3(1), 215- 219.Purnamadewi, Yasinta Roesmiatun, and Amalia Zahra. "Enhancing detection of zero-day phishing email attacks in the Indonesian language using deep learning algorithms." Bulletin of Electrical Engineering and Informatics 14.1 (2025): 505-512.
[6] Albladi, A., Islam, M., & Seals, C. (2025). Sentiment Analysis of Twitter data using NLP Models: A Comprehensive Review. IEEE Access.Althobaiti, Kholoud, and Nawal Alsufyani. "A review of organization-oriented phishing research." PeerJ Computer Science 10 (2024): e2487.
[7] Shanmugavadivel, K., Subramanian, M., Sanjai, R., & Motheeswaran, K. (2024, March). Beyond Tech@ DravidianLangTech2024: Fake News Detection in Dravidian Languages Using Machine Learning. In Proceedings of the Fourth Workshop on Speech, Vision, and Language Technologies for Dravidian Languages (pp. 124-128).
[8] Karim, A., Mansab, M., Shahroz, M.,Mushtaq, M. F., & cheol Jeong, I. (2025). Anticipating impression using textual sentiment based on ensemble LRD model. Expert Systems with Applications, 263, 125717.
[9] Alotaibi, A., Nadeem, F., & Hamdy, M. (2025). Weakly Supervised Deep Learning for Arabic Tweet Sentiment Analysis on Education Reforms: Leveraging Pre-trained Models and LLMs with Snorkel. IEEE Access.
[10] Cicekyurt, E., & Bakal, G. (2025). Enhancing sentiment analysis in stock market tweets through BERT-based knowledge transfer. Computational Economics, 1-23.
[11] Tembhurne, J. V., Lakhotia, K., & Agrawal, A. (2025). Twitter sentiment analysis using ensemble of multi- channel model based on machine learning and deep learning techniques. Knowledge and Information Systems, 67(2), 1045-1071
[12] Babu, M. S. S., Suryanarayana, S. V., Sruthi, M., Lakshmi, P. B., Sravanthi, T., & Spandana, M. (2025). Enhancing Sentiment Analysis With Emotion And Sarcasm Detection: A Transformer-Based Approach. Metallurgical and Materials Engineering, 794-803.
[13] Raturi, V., Rawat, D., Narang, H., Thapliyal, N., Parthiban, P., & Dogra, A. (2025, February). Sentiment evolution on social media: An in-depth study using Naive bayes for Twitter sentiment analysis. In AIP Conference Proceedings (Vol. 3224, No. 1). AIP Publishing.
[14] Paul, J., Mallick, S., Mitra, A., Roy, A., & Sil, J. (2025). Multi-Modal Twitter Data Analysis for Identifying Offensive Posts Using a Deep Cross Attention based Transformer Framework. ACM Transactions on Knowledge Discovery from Data.Anirudh, S., et al. "An ensemble classification model for phishing mail detection." Procedia Computer Science 233 (2024): 970-978.
[15] Babu, B. R., Ramakrishna, S., & Duvvuri, S. K. (2025, February). Advanced Sentiment and Trend Analysis of Twitter Data Using CNN-LSTM and Word2Vec. In 2025 4th International Conference on Sentiment Analysis and Deep Learning (ICSADL) (pp. 1536- 1543). IEEE.
[16] Ramanathan, V., Al Hajri, H., & Ruth, A. (2024, April). Conceptual level semantic sentiment analysis using Twitter data. In 2024 International Conference on Advances in Data Engineering and Intelligent Computing Systems (ADICS) (pp. 1-8). IEEE.
[17] Mahalakshmi, V., Shenbagavalli, P., Raguvaran, S., Rajakumareswaran, V., & Sivaraman, E. (2024). Twitter sentiment analysis using conditional generative adversarial network. International Journal of Cognitive Computing in Engineering, 5, 161-169
[18] Sabir, A., Ali, H. A., & Aljabery, M. A. (2024). Chatgpt tweets sentiment analysis using machine learning and data classification. Informatica, 48(7)
[19] Darshan, K., Jerusha, S., Manjunatha, S., Prashant, K., & Shivashankara, N. (2024). NLP-Powered Sentiment Analysis on the Twitter. Saudi Journal of Engineering and Technology, 9, 1-11.
[20] Molenaar, A., Lukose, D., Brennan, L., Jenkins, E. L., & McCaffrey, T. A. (2024). Using Natural Language Processing to explore social media opinions on Food Security: sentiment analysis and topic modeling study. Journal of Medical Internet Research, 26, e47826
[21] Valarmathi, B., Gupta, N. S., Karthick, V., Chellatamilan, T., Santhi, K., & Chalicheemala, D. (2024). Sentiment Analysis of Covid-19 Twitter Data using Deep Learning Algorithm. Procedia Computer Science, 235, 3397-3407.
[22] Khan, M., & Srivastava, A. (2024). Sentiment analysis of Twitter data using machine learning techniques. International Journal of Engineering and Management Research, 14(1), 196-203.