Osaka Kyoiku University Researcher Information
日本語 | English
Curriculum Vitaes
Profile Information
- Affiliation
- Associate Professor, Osaka Kyoiku University
- Degree
- Ph.D. in science(Sep, 2019, Osaka University)
- ORCID ID
https://orcid.org/0000-0002-0913-4641- J-GLOBAL ID
- 202101001141418602
- researchmap Member ID
- R000019012
Human–AI Education Scientist
I am a computational researcher studying how AI reshapes human learning and social systems. My work integrates large language models, learning analytics, and social network science. I examine how AI agents influence motivation, decision making, and collective learning dynamics in real-world educational environments. Rather than viewing AI as a tool, I conceptualize AI agents as emergent social actors within human learning ecosystems.
This work bridges computational methods, educational theory, and public policy to advance a science of AI-mediated learning.
- Human–AI Learning Systems
- Educational Foundation Models
- AI-mediated Social Infrastructures in Education
Research Interests
9Research History
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Apr, 2026 - Present
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Apr, 2025 - Present
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Apr, 2021 - Mar, 2023
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Jun, 2013 - Apr, 2021
Education
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Apr, 2012 - Mar, 2018
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Apr, 2007 - Mar, 2012
Committee Memberships
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Jun, 2025 - Present
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May, 2025 - Present
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Sep, 2022 - Mar, 2024
Papers
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From Rule-Based to LLM-Based Agents: A Calibrated Simulation Framework for Classroom Social NetworksArtificial Intelligence in Education (AIED 2026), Accepted as SHORT paper (acceptance rate 15.3%), Jun, 2026 Peer-reviewedLead authorCorresponding author
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May 12, 2026Authentic school examinations provide a high-validity test bed for evaluating multimodal large language models (MLLMs), yet benchmarks grounded in Japanese K-12 assessments remain scarce. We present a multimodal dataset constructed from Japan's National Assessment of Academic Ability, comprising officially released middle-school items in Science, Mathematics, and Japanese Language. Unlike existing benchmarks based on synthetic or curated data, our dataset preserves real exam layouts, diagrams, and Japanese educational text, together with nationwide aggregated student response distributions (N $\approx$ 900{,}000). These features enable direct comparison between human and model performance under a unified evaluation framework. We benchmark recent multimodal LLMs using exact-match accuracy and character-level F1 for open-ended responses, observing substantial variation across subjects and strong sensitivity to visual reasoning demands. Human evaluation and LLM-as-judge analyses further assess the reliability of automatic scoring. Our dataset establishes a reproducible, human-grounded benchmark for multimodal educational reasoning and supports future research on evaluation, feedback generation, and explainable AI in authentic assessment contexts. Our dataset is available at: https://github.com/KyosukeTakami/gakucho-benchmark
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Feb 12, 2026Large language models (LLMs) show promise for automatically generating feedback in education settings. However, it remains unclear how specific feedback elements, such as tone and information coverage, contribute to learning outcomes and learner acceptance, particularly across learners with different personality traits. In this study, we define six feedback elements and generate feedback for multiple-choice biology questions using GPT-5. We conduct a learning experiment with 321 first-year high school students and evaluate feedback effectiveness using two learning outcomes measures and subjective evaluations across six criteria. We further analyze differences in how feedback acceptance varies across learners based on Big Five personality traits. Our results show that effective feedback elements share common patterns supporting learning outcomes, while learners' subjective preferences differ across personality-based clusters. These findings highlight the importance of selecting and adapting feedback elements according to learners' personality traits when we design LLM-generated feedback, and provide practical implications for personalized feedback design in education.
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Artificial Intelligence in Education, Practitioners Industry and Policy (PIP) track, AIED 2025, Jul, 2025 Peer-reviewedLead author
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Proceedings of the 18th International Conference on Educational Data Mining , Palermo, Italy, 582-585, Jul, 2025 Peer-reviewedLead author
Misc.
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Apr, 2026研究報告書全体版はURLリンクより閲覧可能。
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NIER, 154 177-190, Mar, 2025 Peer-reviewedLast author
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153 159-167, Mar 31, 2024 Peer-reviewedLast author
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国立教育政策研究所プロジェクト研究「データ駆動型教育」の課題と実現可能性に関する調査研究, Mar 29, 2024
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国立教育政策研究所プロジェクト研究「データ駆動型教育」の課題と実現可能性に関する調査研究, Sep 20, 2023
Books and Other Publications
3Presentations
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日本教育心理学会第 67 回総会, Oct 12, 2025, 日本教育心理学会 Invitedいじめの通報・相談・気付き・見守りのためのアプリと統合的データ解析の可能性 戸田 有一, 金綱 知征, 隈 有子, 山本 博樹, 高見 享佑
Professional Memberships
8Research Projects
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研究開発とSociety5.0との橋渡しプログラム(BRIDGE), 内閣府, Apr, 2026 - Mar, 2028
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科学研究費助成事業 若手研究, 日本学術振興会, Apr, 2023 - Mar, 2027
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科学研究費助成事業 基盤研究(B), 日本学術振興会, Apr, 2023 - Mar, 2026
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2020年度 AIPチャレンジ, 科学技術振興機構, Jun, 2020 - Mar, 2021
Social Activities
11Media Coverage
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日経BP, 教育とICT Online, 大阪教育大学 みらい教育共創フォーラム 2025 & 教育とICTセミナー 2025 大阪 Summer 産官学で次世代教育を推進 教育の未来を共創する, Oct, 2025 Internet大阪教育大学は2025年8月1日と2日の2日間、天王寺キャンパスにある「みらい教育共創館」で「みらい教育共創フォーラム 2025」と「教育とICTセミナー 2025 大阪 Summer」(日経BPと共催)を開催した。産官学連携による教育改革などをテーマに多様な登壇者による講演やパネルディスカッションを実施。また、教育委員会のポスター発表や企業展示で、様々な事例や最新のソリューションを紹介した。
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KADOKAWA ASCII Research Laboratories, Inc., ASCII STARTUP 特集 NEDO「AI NEXT FORUM 2023」で展示される最新AI技術(3), https://ascii.jp/elem/000/004/122/4122976/, Feb 3, 2023 Internet