Arabic authorship attribution: An extensive study on twitter posts
Document Type
Article
Source of Publication
ACM Transactions on Asian and Low-Resource Language Information Processing
Publication Date
11-1-2018
Abstract
© 2018 ACM Law enforcement faces problems in tracing the true identity of offenders in cybercrime investigations. Most offenders mask their true identity, impersonate people of high authority, or use identity deception and obfuscation tactics to avoid detection and traceability. To address the problem of anonymity, authorship analysis is used to identify individuals by their writing styles without knowing their actual identities. Most authorship studies are dedicated to English due to its widespread use over the Internet, but recent cyber-attacks such as the distribution of Stuxnet indicate that Internet crimes are not limited to a certain community, language, culture, ideology, or ethnicity. To effectively investigate cybercrime and to address the problem of anonymity in online communication, there is a pressing need to study authorship analysis of languages such as Arabic, Chinese, Turkish, and so on. Arabic, the focus of this study, is the fourth most widely used language on the Internet. This study investigates authorship of Arabic discourse/text, especially tiny text, Twitter posts. We benchmark the performance of a profile-based approach that uses n-grams as features and compare it with state-of-the-art instance-based classification techniques. Then we adapt an event-visualization tool that is developed for English to accommodate both Arabic and English languages and visualize the result of the attribution evidence. In addition, we investigate the relative effect of the training set, the length of tweets, and the number of authors on authorship classification accuracy. Finally, we show that diacritics have an insignificant effect on the attribution process and part-of-speech tags are less effective than character-level and word-level n-grams.
DOI Link
ISSN
Publisher
Association for Computing Machinery
Volume
18
Issue
1
Last Page
51
Disciplines
Computer Sciences | Social and Behavioral Sciences
Keywords
Authorship attribution, Short text, Social media, Twitter, Visualization
Scopus ID
Recommended Citation
Altakrori, Malik H.; Iqbal, Farkhund; Fung, Benjamin C.M.; Ding, Steven H.H.; and Tubaishat, Abdallah, "Arabic authorship attribution: An extensive study on twitter posts" (2018). All Works. 533.
https://zuscholars.zu.ac.ae/works/533
Indexed in Scopus
yes
Open Access
no