Toward Inclusivity: Rethinking Islamophobic Content Classification in the Digital Age

Autor/innen

DOI:

https://doi.org/10.32473/flairs.37.1.135342

Schlagworte:

freedom of speech, Islamophobia, social media, Hate Speech Detection, multi-class

Abstract

In this paper, we implement a comprehensive three class system to categorize social media discussions about Islam and Muslims, enhancing the typical binary approach. These classes are: I) General Discourse About Islam and Muslims, II) Criticism of Islamic
Teachings and Figures, and III) Comments Against Muslims. These categories are designed to balance the nuances of free speech while protecting diverse groups like Muslims, ex-Muslims, LGBTQ+ communities, and atheists. By utilizing machine learning and employing transformer-based models, we analyze the distribution and characteristics of these classes in social media content. Our findings reveal distinct patterns of user engagement with topics related to Islam, providing valuable insights into the complexities of digital discourse. This research contributes to the fields of quantitative social science by offering an improved method for understanding and moderating online discussions on sensitive religious and cultural subjects.

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Veröffentlicht

2024-05-13

Zitationsvorschlag

Aldreabi, E., Chhangani, M. D., Harahsheh, K., Lee, J., Chen, C.-H., & Blackburn, J. (2024). Toward Inclusivity: Rethinking Islamophobic Content Classification in the Digital Age. The International FLAIRS Conference Proceedings, 37(1). https://doi.org/10.32473/flairs.37.1.135342

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Rubrik

Special Track: Applied Natural Language Processing