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Enhancing children’s understanding of algorithmic biases in and with text-to- image generative AI

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SAGE Publications Inc.

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Despite the growing concerns surrounding algorithmic biases in generative AI (artificial intelligence), there is a noticeable lack of research on how to facilitate children and young people's awareness and understanding of them. This study aimed to address this gap by conducting hands-on workshops with fourth- and seventh-grade students in Finland, and by focusing on students' (N = 209) evolving explanations of the potential causes of algorithmic biases within text-to-image generative models. Statistically significant progress in children's data-driven explanations was observed on a written reasoning test, which was administered prior to and after the intervention, as well as in their responses to the worksheets they filled out during a lesson that focused on algorithmic biases. The article concludes with a discussion on the development and facilitation of children's understanding of algorithmic biases

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Article, Faculty of Economic and Management Sciences (Research and Innovation)--Northwest University, Vanderbijlpark Campus

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Vartiainen, H. et al. 2025. Enhancing children’s understanding of algorithmic biases in and with text-to- image generative AI. new media & society 2025, Vol. 27(9) 5342–5368. [https://doi.org/10.1177/14614448241252820]

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