Survey: Artificial Intelligence, Computational Thinking and Learning

被引:0
作者
Nina Bonderup Dohn
Yasmin Kafai
Anders Mørch
Marco Ragni
机构
[1] University of Southern Denmark,Department of Design and Communication
[2] University of Pennsylvania,Graduate School of Education
[3] University of Oslo,Department of Education
[4] Technical University Chemnitz,Institute of Psychology
来源
KI - Künstliche Intelligenz | 2022年 / 36卷
关键词
Computational thinking; Learning; Artificial intelligence; Framework for computational thinking; Problem-solving;
D O I
暂无
中图分类号
学科分类号
摘要
Learning is central to both artificial intelligence and human intelligence, the former focused on understanding how machines learn, the latter concerned with how humans learn. With the growing relevance of computational thinking, these two efforts have become more closely connected. This survey examines these connections and points to the need for educating the general public to understand the challenges which the increasing integration of AI in human lives pose. We describe three different framings of computational thinking: cognitive, situated, and critical. Each framing offers valuable, but different insights into what computational thinking can and should be. The differences between the three framings also concern the views of learning that they embody. We combine the three framings into one framework which emphasizes that (1) computational thinking activities involve engagement with algorithmic processes, and (2) the mere use of a digital artifact for an activity is not sufficient to count as computational thinking. We further present a set of approaches to learning computational thinking. We argue for the significance of computational thinking as regards artificial intelligence on three counts: (i) Human developers use computational thinking to create and develop artificial intelligence systems, (ii) understanding how humans learn can enrich artificial intelligence systems, and (iii) such enriched systems will be explainable. We conclude with an introduction of the articles included in the Special Issue, focusing on how they call upon and develop the themes of this survey.
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页码:5 / 16
页数:11
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