Cognitive Processes and Mental Models in Mathematics Teaching Using Artificial Intelligence

dc.contributor.authorHuclová, Miroslava
dc.contributor.authorHonzík, Lukáš
dc.contributor.authorKönigsmarková, Soňa
dc.date.accessioned2026-02-05T11:05:41Z
dc.date.available2026-02-05T11:05:41Z
dc.date.issued2025
dc.date.updated2026-02-05T11:05:41Z
dc.description.abstractIn the context of increasing digitisation of education, this study examines the level of digital competence of recent high school graduates in the use of generative language models and equation editing tools in mathematics teaching. The research aimed to verify how effectively students can work with artificial intelligence tools in creating and solving word problems, primarily through systems of linear equations, and to identify the mental models they apply in doing so. The research was conducted on a sample of 25 first-year students from the Faculty of Education. The methodology employed a combination of quantitative and qualitative approaches, with the key analytical unit being the so-called semantic-logical structure (S-L structure), which enabled the monitoring of the transformation of scientific content (A), the teaching task (B), and the student's mental schema (C). The results showed that students' digital skills are predominantly at the basic level – only 28% of participants were able to adjust the prompt and use AI effectively and critically. Most were satisfied with the output generated without more profound reflection. Using the equation editor was a completely new experience for more than half of them. The data also shows that while students can handle basic technical tasks, they often lack knowledge of more advanced tools, confidence, and tend to be satisfied with the first result without conducting a thorough check. On the other hand, it was confirmed that students who reflected on their mistakes and actively adjusted prompts were able to gradually improve their outcomes, which suggests that these skills can be developed in a targeted manner. The study highlights the need for the systematic development of digital literacy, problem-solving skills, and reflective thinking in future teachers. The S-L structure has proven to be an effective tool for monitoring cognitive processes in digitally oriented teaching and learning. Practical strategies include prompt engineering workshops, guided reflection, and subject-specific AI training to improve learning outcomes and e-learning quality.en
dc.format27
dc.identifier.doi10.57125/ELIJ.2025.09.25.01
dc.identifier.issn2957-2207
dc.identifier.obd43947558
dc.identifier.orcidHuclová, Miroslava 0009-0002-3255-4481
dc.identifier.orcidHonzík, Lukáš 0009-0008-2007-6236
dc.identifier.orcidKönigsmarková, Soňa 0009-0003-8532-1515
dc.identifier.urihttp://hdl.handle.net/11025/64635
dc.language.isoen
dc.relation.ispartofseriesE-Learning Innovations Journal
dc.rights.accessA
dc.subjectdigital competenceen
dc.subjectgenerative language modelsen
dc.subjectartificial intelligence (AI)en
dc.subjectsemantic-logical structure (S-L structure)en
dc.subjectmathematical problemsen
dc.subjectsystems of linear equationsen
dc.subjectequation editoren
dc.subjectwork with promptsen
dc.titleCognitive Processes and Mental Models in Mathematics Teaching Using Artificial Intelligenceen
dc.typeČlánek v recenzovaném periodiku (Jost)
dc.typeČLÁNEK
dc.type.statusPublished Version
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local.files.size1028361*
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