Date
Publisher
arXiv
Younger generations are growing up in a world increasingly shaped by
intelligent technologies, making early AI literacy crucial for developing the
skills to critically understand and navigate them. However, education in this
field often emphasizes tool-based learning, prioritizing usage over
understanding the underlying concepts. This lack of knowledge leaves
non-experts, especially children, prone to misconceptions, unrealistic
expectations, and difficulties in recognizing biases and stereotypes. In this
paper, we propose a structured and replicable teaching approach that fosters
foundational AI literacy in primary students, by building upon core
mathematical elements closely connected to and of interest in primary
curricula, to strengthen conceptualization, data representation, classification
reasoning, and evaluation of AI. To assess the effectiveness of our approach,
we conducted an empirical study with thirty-one fifth-grade students across two
classes, evaluating their progress through a post-test and a satisfaction
survey. Our results indicate improvements in terminology understanding and
usage, features description, logical reasoning, and evaluative skills, with
students showing a deeper comprehension of decision-making processes and their
limitations. Moreover, the approach proved engaging, with students particularly
enjoying activities that linked AI concepts to real-world reasoning. Materials:
https://github.com/tail-unica/ai-literacy-primary-ed.
Who age?
Study design
