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Evolving Towards a Trustworthy AIEd Model to Predict at Risk Students in Introductory Programming Courses
3
Zitationen
4
Autoren
2023
Jahr
Abstract
Artificial intelligence in education has the potential to transform the educational landscape and influence the role of the involved stakeholders. With recent European Commission publications on the use of artificial intelligence and data in education and training, in addition to the Ethics Guidelines for Trustworthy AI and the forthcoming AI act, there is now a precedent that using AI, in and for education, needs to be more trustworthy (transparent and explainable) to be considered for adoption.
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