Natural Language Processing for Prediction of Election Results on Twitter Engagement and Polls

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Tilottama Goswami , Mukesh Kumar Tripathi, Erappa G, Shivakumar Swamy N, Manohar koli, Niranjan R Chougala

Abstract

With the ability to predict political outcomes and provide insights into public opinion, using Twitter data to predict election results has gained popularity. Twitter offers a massive supply of data for analysis due to its enormous user base and real-time nature. Researchers use sentiment analysis tools to categorize tweets as good, harmful, or neutral and follow sentiment patterns over time. Network analysis finds influential users and digs deeper into the dynamics of political discourse. The accuracy of predictions is improved by combining traditional polling data with machine learning methods. Twitter data analysis has the potential to offer insightful information for election campaigns and improve political strategies despite issues like representativeness and identifying genuine sentiment. Ongoing research focuses on refining methodologies and addressing limitations, advancing the reliability of election prediction using Twitter data. The paper shows the results of election prediction for Indian political parties based on Twitter data

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How to Cite
Tilottama Goswami, et al. (2023). Natural Language Processing for Prediction of Election Results on Twitter Engagement and Polls. International Journal on Recent and Innovation Trends in Computing and Communication, 11(9), 1932–1941. https://doi.org/10.17762/ijritcc.v11i9.9190
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