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Main Authors: Hu, Tong, Wang, Songzan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.15955
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author Hu, Tong
Wang, Songzan
author_facet Hu, Tong
Wang, Songzan
contents This exploratory case study investigated two contrasting pedagogical approaches for LCA-assisted programming with five novice high school students preparing for a WeChat Mini Program competition. In Phase 1, students used LCAs to generate code from abstract specifications (From-Scratch approach), achieving only 20% MVP completion. In Phase 2, students adapted existing Minimal Functional Units (MFUs), small, functional code examples, using LCAs, achieving 100% MVP completion. Analysis revealed that the MFU-based approach succeeded by aligning with LCA strengths in pattern modification rather than de novo generation, while providing cognitive scaffolds that enabled students to navigate complex development tasks. The study introduces a dual-scaffolding model combining technical support (MFUs) with pedagogical guidance (structured prompting strategies), demonstrating that effective LCA integration depends less on AI capabilities than on instructional design. These findings offer practical guidance for educators seeking to transform AI tools from sources of frustration into productive learning partners in programming education.
format Preprint
id arxiv_https___arxiv_org_abs_2506_15955
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle From Generation to Adaptation: Comparing AI-Assisted Strategies in High School Programming Education
Hu, Tong
Wang, Songzan
Computers and Society
Software Engineering
This exploratory case study investigated two contrasting pedagogical approaches for LCA-assisted programming with five novice high school students preparing for a WeChat Mini Program competition. In Phase 1, students used LCAs to generate code from abstract specifications (From-Scratch approach), achieving only 20% MVP completion. In Phase 2, students adapted existing Minimal Functional Units (MFUs), small, functional code examples, using LCAs, achieving 100% MVP completion. Analysis revealed that the MFU-based approach succeeded by aligning with LCA strengths in pattern modification rather than de novo generation, while providing cognitive scaffolds that enabled students to navigate complex development tasks. The study introduces a dual-scaffolding model combining technical support (MFUs) with pedagogical guidance (structured prompting strategies), demonstrating that effective LCA integration depends less on AI capabilities than on instructional design. These findings offer practical guidance for educators seeking to transform AI tools from sources of frustration into productive learning partners in programming education.
title From Generation to Adaptation: Comparing AI-Assisted Strategies in High School Programming Education
topic Computers and Society
Software Engineering
url https://arxiv.org/abs/2506.15955