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In the Service of Online Order: Tackling Cyber-Bullying with Machine Learning and Affect Analysis

Authors :
Ptaszynski, Michal
Dybala, Pawel
Matsuba, Tatsuaki
Masui, Fumito
Rzepka, Rafal
Araki, Kenji
Momouchi, Yoshio
Source :
International Journal of Computational Linguistics Research, Vol. 1, Issue 3, pp. 135-154, 2010
Publication Year :
2022

Abstract

One of the burning problems lately in Japan has been cyber-bullying, or slandering and bullying people online. The problem has been especially noticed on unofficial Web sites of Japanese schools. Volunteers consisting of school personnel and PTA (Parent-Teacher Association) members have started Online Patrol to spot malicious contents within Web forums and blogs. In practise, Online Patrol assumes reading through the whole Web contents, which is a task difficult to perform manually. With this paper we introduce a research intended to help PTA members perform Online Patrol more efficiently. We aim to develop a set of tools that can automatically detect malicious entries and report them to PTA members. First, we collected cyber-bullying data from unofficial school Web sites. Then we performed analysis of this data in two ways. Firstly, we analysed the entries with a multifaceted affect analysis system in order to find distinctive features for cyber-bullying and apply them to a machine learning classifier. Secondly, we applied a SVM based machine learning method to train a classifier for detection of cyber-bullying. The system was able to classify cyber-bullying entries with 88.2% of balanced F-score.<br />Comment: 12 pages, 11 tables, 6 figures

Details

Database :
arXiv
Journal :
International Journal of Computational Linguistics Research, Vol. 1, Issue 3, pp. 135-154, 2010
Publication Type :
Report
Accession number :
edsarx.2203.02116
Document Type :
Working Paper