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Stakeholder Responsibility for Building Trustworthy Learning Analytics in the AI-Era
0
Zitationen
4
Autoren
2025
Jahr
Abstract
This position paper builds on previous research publications and activities related to trustworthy learning analytics (LA) to provide an additional angle on the fundamental considerations for ensuring trustworthy LA. In our view, these considerations include strategic guidance and support, pedagogical soundness and human interaction, stakeholder engagement, data and AI literacy, ethics, data limitations and meaningful use of algorithms, as well as transparency of the whole process. In this paper, we discuss each of the considerations with respect to the roles and responsibilities of the key stakeholders in the LA systems: educational leaders, educators (especially teachers) and students.
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