TechComp Innovations: Journal of Computer Science and Technology
Vol. 2 No. 1 (2025): TechComp Innovations: Journal of Computer Science and Technology

AI-Powered Frameworks for the Detection and Prevention of Cyberbullying Across Social Media Ecosystems

Mondol, Md. Anas (Unknown)
Uddaula, Md. Ashaf (Unknown)
Hossain, Md. Safaet (Unknown)
Siddika, Mst. Ayesha (Unknown)



Article Info

Publish Date
18 Jun 2025

Abstract

This study presents an advanced AI-powered framework to detect and prevent cyberbullying across diverse social media platforms using a multiclass classification approach. Addressing the growing complexity and linguistic diversity of online abuse, the research integrates various machine learning (RF, LR, SVM) and deep learning (Bi-LSTM, BERT) models trained on a balanced dataset covering bullying categories based on religion, age, ethnicity, gender, and neutral content. Data preprocessing, tokenization, feature extraction via TF-IDF and CountVectorizer, and class balancing using SMOTE were applied to enhance model accuracy. The proposed system further supports real-time detection through social media APIs, offering dynamic monitoring and intervention capabilities. Among the tested models, Random Forest and BERT achieved the highest classification performance with 94% accuracy. Despite its robust architecture, limitations include dependence on English-language datasets, exclusion of multimodal data (e.g., memes, audio), and API restrictions that challenge scalability. Future development will focus on incorporating vision-language models and optimizing the system for real-time, multilingual, and multimodal environments. This study contributes to digital safety efforts by proposing a scalable and adaptive detection system suitable for safeguarding users from evolving forms of online harassment.

Copyrights © 2025






Journal Info

Abbrev

TechCompInnovations

Publisher

Subject

Automotive Engineering Computer Science & IT Decision Sciences, Operations Research & Management

Description

TechComp Innovations: Journal of Computer Science and Technology is a premier scholarly publication dedicated to advancing knowledge and understanding in the rapidly evolving field of computer science and technology. The journal serves as a platform for researchers, academics, engineers, and ...