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Title

Identifying Mobile Owner based on Authorship Attribution using WhatsApp Conversation

Author

Badr Mohammd Almezaini and Muhammad Asif Khan

Citation

Vol. 21  No. 7  pp. 317-323

Abstract

Social media is increasingly becoming a part of our daily life for communicating each other. There are various tools and applications for communication and therefore, identity theft is a common issue among users of such application. A new style of identity theft occurs when cybercriminals break into WhatsApp account, pretend as real friends and demand money or blackmail emotionally. In order to prevent from such issues, data mining can be used for text classification (TC) in analysis authorship attribution (AA) to recognize original sender of the message. Arabic is one of the most spoken languages around the world with different variants. In this research, we built a machine learning model for mining and analyzing the Arabic messages to identify the author of the messages in Saudi dialect. Many points would be addressed regarding authorship attribution mining and analysis: collect Arabic messages in the Saudi dialect, filtration of the messages' tokens. The classification would use a cross-validation technique and different machine-learning algorithms (Na?ve Baye, Support Vector Machine). Results of average accuracy for Na?ve Baye and Support Vector Machine have been presented and suggestions for future work have been presented.

Keywords

whatsapp, na?ve bayes, support vector machine, authorship attribution, text classification

URL

http://paper.ijcsns.org/07_book/202107/20210736.pdf