Paper Reading AI Learner

Smart technology in the classroom: a systematic review.Prospects for algorithmic accountability

2020-07-13 13:34:49
Arian Garshi, Malin Wist Jakobsen, Jørgen Nyborg-Christensen, Daniel Ostnes, Maria Ovchinnikova

Abstract

Artificial intelligence (AI) algorithms have emerged in the educational domain as a tool to make learning more efficient. Different applications for mastering particular skills, learning new languages, and tracking their progress are used by children. What is the impact on children from using this smart technology? We conducted a systematic review to understand the state of the art. We explored the literature in several sub-disciplines: wearables, child psychology, AI and education, school surveillance, and accountability. Our review identified the need for more research for each established topic. We managed to find both positive and negative effects of using wearables, but cannot conclude if smart technology use leads to lowering the young children's performance. Based on our insights we propose a framework to effectively identify accountability for smart technology in education.

Abstract (translated)

URL

https://arxiv.org/abs/2007.06374

PDF

https://arxiv.org/pdf/2007.06374.pdf


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