Lu, Ruei-Shan
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Integrating AI Simulations and Computational Grounded Theory to Explore Biodynamic Education in Science Museums Wang, Tao-Hua; Lu, Ruei-Shan; Lin, Hao-Chiang Koong
Journal of Computers for Science and Mathematics Learning Vol. 2 No. 2 (2025): Journal of Computers for Science and Mathematics Learning
Publisher : Scientia Publica Media

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.70232/jcsml.v2i2.37

Abstract

This study investigates how science museums can serve as catalysts for public understanding of biodynamic agriculture by integrating AI-generated simulations and an AI-augmented grounded theory (CGT) approach. Forty-nine elementary school teachers in Taiwan participated in a workshop featuring six biodynamic-themed simulation videos created with Mootion AI, depicting insect, bird, and amphibian ecologies within biodynamic frameworks. Participants wrote reflective journals, and twelve were interviewed in focus groups. The study employed Lin et al.’s (2025) CGT model, incorporating traditional inductive coding with computational techniques such as term frequency-inverse document frequency (tf-idf) and N-gram analysis to analyze participants’ interpretive responses. Results identified eight interconnected dimensions—including cognitive clarity, affective engagement, instructional relevance, and ethical reflection—that constitute a conceptual model titled “Human-Centered Biodynamics.” Findings show that digitally mediated exhibits enhance comprehension of biodynamic principles and foster emotional and pedagogical resonance. Participants reported a shift from perceiving biodynamics as abstract to viewing it as relevant and actionable, suggesting science museums can be transformative platforms for ecological literacy when empowered by creative technologies. This study contributes to the literature on informal science education, sustainability communication, and AI-assisted qualitative research by offering a replicable framework for integrating digital storytelling and grounded theory in ecological pedagogy.
AI Co-Creative Art Narrative and Emotional Mediation Research: A Computational Grounded Theory Analysis of “The Era of Prompts” Exhibition at Tainan Art Museum Lin, Hao-Chiang Koong; Wang, Tao-Hua; Lu, Ruei-Shan
Journal of Computers for Science and Mathematics Learning Vol. 3 No. 1 (2026): Journal of Computers for Science and Mathematics Learning
Publisher : Scientia Publica Media

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.70232/jcsml.v3i1.45

Abstract

Against the backdrop of rapid development in generative artificial intelligence technology, the definition, process, and evaluation standards of artistic creation are undergoing a profound transformation. This study takes “The Era of Prompts—A Challenge Letter from AI to Humanity” exhibition at Tainan Art Museum as the research field, employing mixed research methods to explore the multiple impacts and educational implications triggered by AI intervention in artistic creation. The research integrates exhibition ethnography, procedural scaffolding experimental design, and computational grounded theory analysis, conducting a three-stage learning journey experiment with 206 university students in southern Taiwan. The primary objective was to understand how university students perceive and engage with AI in the context of art creation, and to identify the core themes that emerge from their learning experiences. The main findings reveal five grounded themes of AI art learning: computational writing practice, emotional expression mediation, imperfection value reconstruction, collaborative relationship dynamics, and literacy requirement identification. These five themes interact spirally to form the theoretical model of “Adaptive Development of Art Learning in the AI Era.” The research concludes that art education in the AI era needs to construct new pedagogical paradigms that embrace technological innovation while maintaining human subjectivity, criticality, and emotional depth in creation. This study provides important references for theoretical construction and educational practice of AI art, offering a nuanced understanding of the human-AI creative partnership. The findings suggest that rather than viewing AI as a mere tool, it should be approached as a collaborator, a mediator of emotional expression, and a catalyst for re-evaluating the very nature of creativity. This research contributes to the fields of art education, human-computer interaction, and digital humanities by providing an empirically grounded framework for designing and evaluating AI-integrated learning environments.