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Published:2025/8/22 17:10:33

個別化教育を叶える!教師向けAIシステムFACET登場✨

超要約:先生の個別指導をAIがサポート!宿題とかもラクラク作れちゃう魔法のシステム🪄

✨ ギャル的キラキラポイント ✨

● 生徒に合わせた教材(きょうざい)をAIが作ってくれるから、先生の負担が激減(げきげん)するってこと💖 ● 生徒の個性(学習意欲とか)に合わせてくれるから、みんなやる気UP間違いなしっ💪 ● 色んな教育現場(きょういくげんば)で使えるから、色んなとこで活躍しそうじゃん?

詳細解説

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FACET: Teacher-Centred LLM-Based Multi-Agent Systems-Towards Personalized Educational Worksheets

Jana Gonnermann-M\"uller / Jennifer Haase / Konstantin Fackeldey / Sebastian Pokutta

The increasing heterogeneity of student populations poses significant challenges for teachers, particularly in mathematics education, where cognitive, motivational, and emotional differences strongly influence learning outcomes. While AI-driven personalization tools have emerged, most remain performance-focused, offering limited support for teachers and neglecting broader pedagogical needs. This paper presents the FACET framework, a teacher-facing, large language model (LLM)-based multi-agent system designed to generate individualized classroom materials that integrate both cognitive and motivational dimensions of learner profiles. The framework comprises three specialized agents: (1) learner agents that simulate diverse profiles incorporating topic proficiency and intrinsic motivation, (2) a teacher agent that adapts instructional content according to didactical principles, and (3) an evaluator agent that provides automated quality assurance. We tested the system using authentic grade 8 mathematics curriculum content and evaluated its feasibility through a) automated agent-based assessment of output quality and b) exploratory feedback from K-12 in-service teachers. Results from ten internal evaluations highlighted high stability and alignment between generated materials and learner profiles, and teacher feedback particularly highlighted structure and suitability of tasks. The findings demonstrate the potential of multi-agent LLM architectures to provide scalable, context-aware personalization in heterogeneous classroom settings, and outline directions for extending the framework to richer learner profiles and real-world classroom trials.

cs / cs.HC / cs.MA