Contextualizing AI Education for K-12 Students to Enhance Their Learning of AI Literacy Through Culturally Responsive Approaches

被引:0
|
作者
Amy Eguchi
Hiroyuki Okada
Yumiko Muto
机构
[1] University of California San Diego,Department of Education Studies
[2] Tamagawa University,Brain Science Institute, Graduate School of Engineering, Graduate School of Brain Sciences
[3] Tamagawa University,Brain Research institute
来源
关键词
Contextualization; AI literacy; Culturally responsive pedagogy; K-12 AI education; Cultural context;
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摘要
AI has become ubiquitous in our society, accelerated by the speed of the development of machine learning algorithms and voice and facial recognition technologies used in our everyday lives. Furthermore, AI-enhanced technologies and tools are no strangers in the field of education. It is more evident that it is important to prepare K-12 population of students for their future professions as well as citizens capable of understanding and utilizing AI-enhanced technologies in the future. In response to such needs, the authors started a collaborative project aiming to provide a K-12 AI curriculum for Japanese students. However, the authors soon realized that it is important to contextualize the learning experience for the targeted K-12 students. The paper aims at introducing the idea of contextualizing AI education and learning experience of K-12 students with examples and tips using the work-in-progress version of the contextualized curriculum using culturally responsive approaches to promote the awareness and understanding of AI ethics among middle school students.
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页码:153 / 161
页数:8
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