Digital Educational Tribes: Platform Algorithms and Students’ Academic Identity

Authors

DOI:

https://doi.org/10.47451/phi2025-08-01

Keywords:

digital educational tribes, algorithms as educators, academic identity, platform-based education, epistemic aesthetics, performative participation, educational fragmentation, cognitive resilience, digital ethnography, self-presentation in educational environments, academic subjectivity, epistemological instability

Abstract

This article analyzes the mechanisms shaping students’ academic identity in the digital age, with a focus on educational platforms as emerging spaces of socialization. It explores the phenomenon of digital educational tribes — informal student communities formed around algorithmically curated content on learning platforms. The study examines how services such as Coursera, YouTube, and Google Scholar influence the development of academic identity through individualized learning trajectories, self-socialization styles, and content selection. The methodology combines qualitative interviews and digital ethnography. Central to the analysis is the algorithm as a hidden socializing agent that structurally substitutes the educator in the learning process. The theoretical framework draws on Michel Maffesoli’s concept of tribal sociality, Danah Boyd and D. Marwick’s theories of digital identity, and the platform-based epistemologies of Manuel Castells and Shoshana Zuboff. The findings reveal that students engage not only with educational content but also with norms of communication, cognitive styles, and algorithmically structured logics of interaction. The concept of digital educational tribes is introduced as an analytical model of informal online communities where educational participation is structured not around disciplines, but through algorithmic content selection, knowledge aesthetics, and rituals of inclusion. The key notion of algorithms as educators allows for a reconceptualization of technological systems as agents of educational influence, replacing traditional academic institutions in the process of structural interaction. Based on qualitative interviews and digital ethnography, the study shows that students’ educational behavior is increasingly shaped as a performative identity oriented toward public recognition, aesthetic engagement, and communicative visibility. The article articulates a critical stance on the risks of fragmentation and the loss of worldview coherence in platform-based education. It proposes theoretical approaches for integrating digital educational culture into the academic context without sacrificing cognitive depth, analytical resilience, or systemic pedagogy.

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Author Biography

  • Olha Maltseva, Pryazovskyi State Technical University (Dnipro)

    Doctor of Science in Philosophy, Associate Professor, Department of Sociology and Social Work

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Published

2025-09-30

How to Cite

Digital Educational Tribes: Platform Algorithms and Students’ Academic Identity. (2025). European Scientific E-Journal, 38, 54–67. https://doi.org/10.47451/phi2025-08-01

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