Political sentiment analysis using natural language processing on social media

Authors

DOI:

https://doi.org/10.58190/ijamec.2024.108

Keywords:

Sentiment Classification, Sentiment Analysis Applications , Sentiment analysis, Natural Language Processing

Abstract

In this contemporary era , social media has become an essential component of daily life as a result of the extensive use of the internet. This paper explores sentiment analysis of political topics through social media comments. We collected a large dataset of over 14,000 political comments and applied advanced machine learning models such as logistic regression , linear support vector classification , random forest, decision tree classification , and naive bayes to evaluate expressed sentiments. Performance metrics , including accuracy , precision , recall , and F1 scores , were utilized to assess these models , with Linear SVC achieving the highest accuracy at 91.18% , closely followed by Logistic Regression at 90%. This research not only evaluates model performance on political sentiment data but also addresses data imbalance, presenting actionable insights into each algorithm’s suitability. Our study introduces a refined approach to political sentiment analysis by optimizing model selection for high accuracy and robustness, thus setting a foundation for effective political sentiment understanding on social media platforms.

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Author Biographies

  • Md Shakil Hossain, School of Computing and Informatics, Albukhary International University, Jalan Tun Abdul Razaq 05200 Alor Setar, Kedah, Malaysia

    School of Computing and Informatics

  • MD Rashidul Islam, Albukhary International University, School of Computing and Informatics, Jalan Tun Abdul Razaq 05200 Alor Setar, Kedah

    School of Computing and Informatics

  • Basheer Riskhan, School of Computing and Informatics, Albukhary International University, Jalan Tun Abdul Razaq 05200 Alor Setar, Kedah, Malaysia

    School of Computing and Informatics

  • Md Mehedi Hasan, School of Computing and Informatics, Albukhary International University, Jalan Tun Abdul Razaq 05200 Alor Setar, Kedah, Malaysia

    School of Computing and Informatics

  • Rabiul Islam, School of Computing and Informatics, Albukhary International University, Jalan Tun Abdul Razaq 05200 Alor Setar, Kedah, Malaysia

    School of Computing and Informatics

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Published

10-12-2024

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Section

Research Articles

How to Cite

[1]
“Political sentiment analysis using natural language processing on social media”, J. Appl. Methods Electron. Comput., vol. 12, no. 4, pp. 81–89, Dec. 2024, doi: 10.58190/ijamec.2024.108.

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