DETECTING ONLINE HARASSMENT BASED ON SOCIAL MEDIA TEXT BY USING ENSEMBLE LEARNING

Authors

  • Hamna Iqbal Department of Computer Science, University of Southern Punjab, Multan. Author
  • Muhammad Sabir Department of Computer Science, University of Southern Punjab, Multan. Author
  • Areeba Razzaq Department of Computer Science, University of Southern Punjab, Multan. Author
  • Jahanzeb Munir Department of Information Technology, The Islamia University of Bahawalpur. Author

DOI:

https://doi.org/10.71146/kjmr485

Keywords:

Online Harassment, Ensemble Learning, Social Media, Machine Learning, Cyberbullying

Abstract

Social media is now a tool for passing information, as well as a place to communicate but at the same time, a platform for cyberbullying, hate speech, and Offensive Language. In order to struggle this increasing problem, methods associated with machine learning, for example ensemble learning, are being employed to identify offensive material on such sites. A process with the name of Ensemble learning uses the predictions of many models of classifiers for instance Logistic Regression, SVC and Random Forest in order to classify and reduce the errors as much as possible. When researchers preprocess text from the social media, they were able to preprocess out such features as “Hate Speech,” “Cyberbullying,” and “Offensive Language.” With this approach, a study was accomplished up to 93% accuracy, meaning that ensemble learning is efficient at distinguishing online harassment and can be optimized more by other language model progressions plus sentiment analysis.

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Published

2025-06-14

Issue

Section

Engineering and Technology

How to Cite

DETECTING ONLINE HARASSMENT BASED ON SOCIAL MEDIA TEXT BY USING ENSEMBLE LEARNING. (2025). Kashf Journal of Multidisciplinary Research, 2(06), 48-64. https://doi.org/10.71146/kjmr485

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