4.7 Article

Modeling the structural relationships among Chinese secondary school students' computational thinking efficacy in learning AI, AI literacy, and approaches to learning AI

Journal

EDUCATION AND INFORMATION TECHNOLOGIES
Volume -, Issue -, Pages -

Publisher

SPRINGER
DOI: 10.1007/s10639-023-12029-4

Keywords

Computational thinking; Efficacy; AI literacy; Approaches to learning AI; Structural equation modeling

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K-12 artificial intelligence (AI) education aims to cultivate students' computational thinking in order to apply it to various problems and real-world contexts. This study examined the relationship between Chinese secondary school students' computational thinking efficacy in learning AI, their AI literacy, and approaches to learning AI. The results showed that AI literacy positively influenced students' computational thinking efficacy in learning AI, and this relationship was mediated by sophisticated learning approaches. It is important to focus on students' AI literacy and deep approaches in order to develop their high-level computational thinking efficacy in learning AI. Implications for designing the AI curriculum are discussed.
K-12 artificial intelligence (AI) education requires cultivating students' computational thinking in the school curriculum so as to transfer their computational thinking to diverse problems and authentic contexts. However, students may be limited by traditional computational thinking development activities because they may have a lower degree of computational thinking efficacy for persistent learning of AI when encountering difficulties (computational thinking efficacy in learning AI). Accordingly, this study aimed to explore the relationships among Chinese secondary school students' computational thinking efficacy in learning AI, their AI literacy, and approaches to learning AI. Structural equation modeling was adopted to examine the mediation effect. Data were gathered from 509 Chinese secondary school students, and the confirmatory factor analyses showed that the measures had high reliability and validity. The results revealed that AI literacy was positively related to students' computational thinking efficacy in learning AI, which was mediated by more sophisticated approaches to learning AI, contributing to the current understanding of learning AI. It is crucial to focus on students' AI literacy and deep approaches (e.g., engaging in authentic AI contexts with systematic learning activities for in-depth understanding of AI knowledge) rather than surface approaches (e.g., memorizing AI knowledge) to develop their high-level computational thinking efficacy in learning AI. Implications for designing the AI curriculum are discussed.

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