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Analysis of Cyberbullying Behaviors Using Machine Learning:A Study on Text Classification

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  • Alok Kumar Anand
  • Rajesh Kumar Mahto
  • Awadesh Prasad

Abstract

Introduction:Cyberbullying is a significant concern in today's digital age, affecting individuals across various demographics. Objective: This study aims to analyze and classify instances of cyberbullying using a dataset sourced from Kaggle, containing text data labeled for different types of bullying behaviors. Method: Our approach to tackling these challenges involves several key steps, starting with data preprocessing and feature extraction to identify patterns and improve detection methods, enhancing our understanding of how cyberbullying manifests in online communications. Result: The dataset provides a valuable resource for developing and evaluating machine learning models aimed at detecting sexist and racist content in tweets. Conclusion: This study advances the current understanding of the complexities involved in detecting cyberbullying and paves the way for future breakthroughs in this domain. The binary classification enabled by the 'oh_label' column streamlines the analysis process, making it particularly compatible with binary classification models

Suggested Citation

Handle: RePEc:dbk:rlatia:v:3:y:2025:i::p:126:id:1062486latia2023126
DOI: 10.62486/latia2023126
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