Predicting Cyberbullying Behavior in Social Media for Enhancing Online Safety

被引:0
|
作者
Ritika, Dharamkar [1 ]
Pradnya, Dudhade [1 ]
Yeboah, Jones [1 ]
Nti, Isaac Kofi [1 ]
机构
[1] Univ Cincinnati, Sch Informat Technol, Cincinnati, OH 45221 USA
来源
2024 IEEE 3RD INTERNATIONAL CONFERENCE ON COMPUTING AND MACHINE INTELLIGENCE, ICMI 2024 | 2024年
关键词
Cyberbullying; machine learning; social media; predictive modeling; content moderation; online safety; ADOLESCENTS; MIDDLE;
D O I
10.1109/ICMI60790.2024.10585879
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Cyberbullying can have far-reaching and longlasting consequences, producing major emotional pain and potentially leading to serious mental health concerns such as despair and anxiety. Hence it is an escalating concern in the digital era, necessitating robust preventive strategies and early detection mechanisms. In our study, we conducted a comprehensive investigation into the potential of diverse machine learning (ML) algorithms for predicting cyberbullying behavior in social media posts. We systematically assessed six ML models: Support Vector Machines (SVM)(Accuracy 82%, F1 score 82), Multi-Layer Perceptron (MLP)( Accuracy 78%, F1 score 79), CatBoost(Accuracy 83%, F1 score 84), XGBoost(Accuracy 83%, F1 score 83), Logistic Regression (LR)( Accuracy 82.4%, F1 score 83), and naive Bayes (NB)( Accuracy 76.3%, F1 score 75). The accuracy rates above 80% are generally accepted to be good if are accompanied by decent or high precision and recall values. Rigorous evaluations revealed discernible distinctions in their predictive capabilities. CatBoost and XGBoost demonstrated exceptional accuracy rates of 83% and impressive F1-scores from 84% to 85%, positioning them as front-runners. LR yielded noteworthy results, boasting an 82.4% accuracy rate and an 83% F1-score, ensuring consistent performance in cyberbullying prediction. SVM, MLP, and NB, although slightly trailing, provided credible results, showcasing their adaptability for specific application requirements. Each algorithm presents unique attributes, permitting customization to suit a variety of use cases. These findings hold significant implications, marking a new era in online safety. Machine learning algorithms have the potential to enhance content moderation systems by proactively identifying and addressing cyberbullying, fostering a safer digital environment. However, the choice of algorithm should align with precise objectives and operational needs, with CatBoost and XGBoost suited for comprehensive content moderation and SVM, MLP, LR, and NB suitable for applications necessitating tailored precision or recall optimization. As a future direction for the research, predicting cyberbullying on underrepresented groups or specific groups like LGBTQ+ can also be explored.
引用
收藏
页数:7
相关论文
共 50 条
  • [31] Social Media Use and Cyberbullying Perpetration: A Longitudinal Analysis
    Barlett, Christopher P.
    Gentile, Douglas A.
    Chng, Grace
    Li, Dongdong
    Chamberlin, Kristina
    VIOLENCE AND GENDER, 2018, 5 (03) : 191 - 197
  • [32] Cyberbullying on Social Media: Definitions, Prevalence, and Impact Challenges
    Ray, Geraldine
    Mcdermott, Christopher D.
    Nicho, Mathew
    JOURNAL OF CYBERSECURITY, 2024, 10 (01):
  • [33] Detecting Offensive Language in Social Media to Protect Adolescent Online Safety
    Chen, Ying
    Zhou, Yilu
    Zhu, Sencun
    Xu, Heng
    PROCEEDINGS OF 2012 ASE/IEEE INTERNATIONAL CONFERENCE ON PRIVACY, SECURITY, RISK AND TRUST AND 2012 ASE/IEEE INTERNATIONAL CONFERENCE ON SOCIAL COMPUTING (SOCIALCOM/PASSAT 2012), 2012, : 71 - 80
  • [34] Comparing cyberbullying perpetration on social media between primary and secondary school students
    Ho, Shirley S.
    Chen, Liang
    Ng, Angelica P. Y.
    COMPUTERS & EDUCATION, 2017, 109 : 74 - 84
  • [35] Decoding Cyberbullying on Social Media: A Machine Learning Exploration
    Saeid, Aisha
    Kanojia, Diptesh
    Neri, Ferrante
    2024 IEEE CONFERENCE ON ARTIFICIAL INTELLIGENCE, CAI 2024, 2024, : 425 - 428
  • [36] Social Media Cyberbullying Detection using Machine Learning
    Hani, John
    Nashaat, Mohamed
    Ahmed, Mostafa
    Emad, Zeyad
    Amer, Eslam
    Mohammed, Ammar
    INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2019, 10 (05) : 703 - 707
  • [37] ProTect: a hybrid deep learning model for proactive detection of cyberbullying on social media
    Harshitha, T. Nitya
    Prabu, M.
    Suganya, E.
    Sountharrajan, S.
    Bavirisetti, Durga Prasad
    Gadde, Navya
    Uppu, Lakshmi Sahithi
    FRONTIERS IN ARTIFICIAL INTELLIGENCE, 2024, 7
  • [38] Implications and Preventions of Cyberbullying and Social Exclusion in Social Media: Systematic Review
    Ademiluyi, Adesoji
    Li, Chuqin
    Park, Albert
    JMIR FORMATIVE RESEARCH, 2022, 6 (01)
  • [39] Taxonomy of Cyberbullying Detection and Prediction Techniques in Online Social Networks
    Vyawahare, Madhura
    Chatterjee, Madhumita
    DATA COMMUNICATION AND NETWORKS, GUCON 2019, 2020, 1049 : 21 - 37
  • [40] Social media literacy & adolescent social online behavior in Germany
    Festl, Ruth
    JOURNAL OF CHILDREN AND MEDIA, 2021, 15 (02) : 249 - 271