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Learning about Data, Algorithms, and Algorithmic Justice on TikTok in Personally Meaningful Ways

Morales-Navarro, Luis; Kafai, Yasmin B.; Nguyen, Ha; DesPortes, Kayla; Vacca, Ralph; Matuk, Camillia; Silander, Megan; Amato, Anna; Woods, Peter; Castro, Francisco; Shaw, Mia; Akgun, Selin; Greenhow, Christine; Garcia, Antero

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Authors

Luis Morales-Navarro

Yasmin B. Kafai

Ha Nguyen

Kayla DesPortes

Ralph Vacca

Camillia Matuk

Megan Silander

Anna Amato

Francisco Castro

Mia Shaw

Selin Akgun

Christine Greenhow

Antero Garcia



Contributors

L. Morales-Navarro
Other

Y.B. Kafai
Other

H. Nguyen
Other

K. DesPortes
Other

R. Vacca
Other

C. Matuk
Other

M. Silander
Other

A. Amato
Other

P. Woods
Other

F. Castro
Other

M. Shaw
Other

S. Akgun
Other

C. Greenhow
Other

A. Garcia
Other

Abstract

TikTok, a popular short video sharing application, emerged as the dominant social media platform for young people, with a pronounced influence on how young women and people of color interact online. The application has become a global space for youth to connect with each other, offering not only entertainment but also opportunities to engage with artificial intelligence/machine learning (AI/ML)-driven recommendations and create content using AI/M-powered tools, such as generative AI filters. This provides opportunities for youth to explore and question the inner workings of these systems, their implications, and even use them to advocate for causes they are passionate about. We present different perspectives on how youth may learn in personally meaningful ways when engaging with TikTok. We discuss how youth investigate how TikTok works (considering data and algorithms), take into account issues of ethics and algorithmic justice and use their understanding of the platform to advocate for change.

Citation

Morales-Navarro, L., Kafai, Y. B., Nguyen, H., DesPortes, K., Vacca, R., Matuk, C., Silander, M., Amato, A., Woods, P., Castro, F., Shaw, M., Akgun, S., Greenhow, C., & Garcia, A. (2024, June). Learning about Data, Algorithms, and Algorithmic Justice on TikTok in Personally Meaningful Ways. Presented at ISLS Annual Meeting 2024, Buffalo, NY

Presentation Conference Type Edited Proceedings
Conference Name ISLS Annual Meeting 2024
Start Date Jun 10, 2024
End Date Jun 14, 2024
Acceptance Date Feb 17, 2024
Publication Date 2024-06
Deposit Date Nov 4, 2024
Publicly Available Date Nov 12, 2024
Peer Reviewed Peer Reviewed
Pages 1973-1980
DOI https://doi.org/10.22318/icls2024.704174
Public URL https://nottingham-repository.worktribe.com/output/41537885
Publisher URL https://repository.isls.org/handle/1/10846
Related Public URLs https://arxiv.org/abs/2405.15437

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