Real Time Data Twitter Trends Polling Using Rae Model
Keywords:
Social Media, Twitter, Sentiment Analysis, Opinion Mining, Machine LearningAbstract
Social media holds valuable insights into individuals and society, offering a wealth of data to propel research across various domains, like business, finance, health, socio-economic inequality, and gender vulnerability. Within this landscape, Twitter emerges as a prominent platform primarily utilized for emotive expression around specific events. Functioning as a micro-blogging hub, Twitter serves as a conduit for gathering opinions on products, trends, and political discourse. Twitter generates an immense volume of data, contributing significantly to the challenges associated with big data. Among these challenges lies the complexity in classifying tweets, stemming from the intricate and sophisticated language used, rendering existing tools inadequate. Despite extensive efforts dedicated to this issue, there remains a lack of definitive validation aligning online social media trends with conventional survey results. Sentiment analysis emerges as a method aimed at scrutinizing the sentiments, emotions, and viewpoints of diverse individuals regarding various subjects, capable of examining public opinion expressed in tweets related to news, policies, social movements, and influential figures. Sentiment Analysis has leveraged Machine Learning Classifiers, enabling the automation of opinion mining without the need for manual tweet reading. Machine Learning models have consistently demonstrated impressive outcomes across diverse applications. Thus, this study introduces the utilization of the Real-time Advanced Ensemble Learning (RAE) model for live Twitter trend polling based on real-time data. The effectiveness of this approach will be assessed through metrics such as training and validation accuracy, as well as training and validation loss. Expectations suggest that this model will yield notable advancements compared to previous methods.
Downloads
References
Suraj Kumar, Sonu Kumar, Shivam Bharatiya, Shanvi Gautam, Prof. Mr.Shakun Garg, “Real Time Twitter Sentimental Analysis”, International Journal of Creative Research Thoughts (IJCRT), 2023 IJCRT, Volume 11, Issue 3 March 2023
Niklas Braig, Alina Benz, Soeren Voth, Johannes Breitenbach, Ricardo Buettner, “Machine Learning Techniques for Sentiment Analysis of COVID-19-Related Twitter Data”, IEEE Access ( Volume: 11), 2023, doi: DOI: 10.1109/ACCESS.2023.3242234
Yuxing Qi, Zahratu Shabrina, “Sentiment analysis using Twitter data: a comparative application of lexicon‑ and machine‑ learning‑ based approach”, Social Network Analysis and Mining (2023), doi:10.1007/s13278-023-01030-x
Belal Abdullah Hezam Murshed; Jemal Abawajy; Suresha Mallappa; Mufeed Ahmed Naji Saif; Hasib Daowd Esmail Al-Ariki, “DEA-RNN: A Hybrid Deep Learning Approach for Cyberbullying Detection in Twitter Social Media Platform”, IEEE Access ( Volume: 10),
Shikah J. Alsunaidi, Rawan Talal Alraddadi, Hamoud Aljamaan, “Twitter Spam Accounts Detection Using Machine Learning Models”, 2022 14th International Conference on Computational Intelligence and Communication Networks (CICN), DOI: 10.1109/CICN56167.2022.10008339
Abu Nowhash Chowdhury, Shawon Guha; Nurul Amin, Shahidul Islam Khan, “Exploiting Diverse Contextual Features through Transformers for Detecting Informative Tweets”, 2022 International Conference on Innovations in Science, Engineering and Technology (ICISET), DOI: 10.1109/ICISET54810.2022.9775891
Maryam Mahdikhani, “Predicting the popularity of tweets by analyzing public opinion and emotions in different stages of Covid-19 pandemic”, International Journal of Information Management Data Insights 2 (2022) 100053,
D. Sunitha, Raj Kumar Patra, N.V. Babu, A. Suresh, Suresh Chand Gupta, “Twitter sentiment analysis using ensemble based deep learning model towards COVID-19 in India and European countries”, Pattern Recognition Letters 158 (2022) 164–170, doi:10.1016/j.patrec.2022.04.027
Sakirin Tam, Rachid Ben Said, Ö. Özgür Tanriöver, “A ConvBiLSTM Deep Learning Model-Based Approach for Twitter Sentiment Classification”, IEEE Access ( Volume: 9), 2021,Electronic ISSN: 2169-3536,
Piyush Vyas, Martin Reisslein, Bhaskar Prasad Rimal, Gitika Vyas, Ganga Prasad Basyal; Prathamesh Muzumdar, “Automated Classification of Societal Sentiments on Twitter With Machine Learning”, IEEE Transactions on Technology and Society ( Volume: 3, Issue: 2, June 2021), DOI: 10.1109/TTS.2021.3108963
Umit Demirbaga, “HTwitt: a hadoop-based platform for analysis and visualization of streaming Twitter data”, Neural Computing and Applications, 2021, Springer, doi:10.1007/s00521-021-06046-y
Mohit Dagar, Abhishek Kajal, Pardeep Bhatia, “Twitter Sentiment Analysis using Supervised Machine Learning Techniques”, 2021 5th International Conference on Information Systems and Computer Networks (ISCON),
Arnab Roy, Muneendra Ojha “Twitter sentiment analysis using deep learning models”, 2020 IEEE 17th India Council International Conference (INDICON), 978-1-7281-6916-3/20, 2020 IEEE, DOI: 10.1109/INDICON49873.2020.9342279
Payal Khurana Batra, Aditi Saxena, Shruti, Chaitanya Goel, “Election Result Prediction Using Twitter Sentiments Analysis”, 2020 Sixth International Conference on Parallel, Distributed and Grid Computing (PDGC),
Anam Yousaf, Muhammad Umer, Saima Sadiq, Saleem Ullah, Seyedali Mirjalili, Vaibhav Rupapara, Michele Nappi, “Emotion Recognition by Textual Tweets Classification Using Voting Classifier (LR-SGD)”, IEEE Access ( Volume: 9), 2020, doi: DOI: 10.1109/ACCESS.2020.3047831
Sheresh Zahoor; Rajesh Rohilla, “Twitter Sentiment Analysis Using Machine Learning Algorithms: A Case Study”, 2020 International Conference on Advances in Computing, Communication & Materials (ICACCM),
[18] Yogesh Chandra; Antoreep Jana, “Sentiment Analysis using Machine Learning and Deep Learning”, 2020 7th International Conference on Computing for Sustainable Global Development (INDIACom),
Manoj Sethi, Sarthak Pandey, Prashant Trar; Prateek Soni, “Sentiment Identification in COVID-19 Specific Tweets”, 2020 International Conference on Electronics and Sustainable Communication Systems (ICESC),
Tulika Saha; Sriparna Saha; Pushpak Bhattacharyya, “Tweet Act Classification : A Deep Learning based Classifier for Recognizing Speech Acts in Twitter”, 2019 International Joint Conference on Neural Networks (IJCNN), DOI: 10.1109/IJCNN.2019.8851805.
Downloads
Published
How to Cite
Issue
Section
License

This work is licensed under a Creative Commons Attribution-ShareAlike 4.0 International License.
All papers should be submitted electronically. All submitted manuscripts must be original work that is not under submission at another journal or under consideration for publication in another form, such as a monograph or chapter of a book. Authors of submitted papers are obligated not to submit their paper for publication elsewhere until an editorial decision is rendered on their submission. Further, authors of accepted papers are prohibited from publishing the results in other publications that appear before the paper is published in the Journal unless they receive approval for doing so from the Editor-In-Chief.
IJISAE open access articles are licensed under a Creative Commons Attribution-ShareAlike 4.0 International License. This license lets the audience to give appropriate credit, provide a link to the license, and indicate if changes were made and if they remix, transform, or build upon the material, they must distribute contributions under the same license as the original.