Supporting inclusive science learning through machine learning: The AIISE framework

Research output: Chapter in book/report/conference proceedingContribution to book/anthologyResearchpeer review

Authors

External Research Organisations

  • German National Library of Science and Technology (TIB)
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Details

Original languageEnglish
Title of host publicationUses of Artificial Intelligence in STEM Education
PublisherOxford University Press
Pages547-567
Number of pages21
ISBN (electronic)9780191991226
ISBN (print)9780198882077
Publication statusPublished - Oct 2024

Abstract

Integrating artificial intelligence (AI) and machine learning (ML) into science education offers the potential to improve teaching and learning processes. Alongside these developments, global education has evolved to include diverse learners by shifting from a disability-centered perspective to a broad understanding of inclusion, aiming at supporting all learners. Linking AI, science education, and inclusive pedagogy promises to understand and model individualized learning supported by ML and learning analytics to enable accessible learning experiences. In this chapter, the NinU-framework (proposed by the Network for Inclusive Science Education: NinU), which bridges inclusive pedagogy and science education, is linked with AI-based perspectives leading to the novel Artificial Intelligence in Inclusive Science Education (AIISE) framework. This chapter describes the AIISE framework and provides researchers with criteria to consider when addressing inclusivity and avoiding discrimination in ML-enhanced learning. It extends the established "NinU scheme" and provides a roadmap for integrating AI into inclusive science education.

Keywords

    Artificial intelligence, Inclusive education, Learning analytics, Science education

ASJC Scopus subject areas

Sustainable Development Goals

Cite this

Supporting inclusive science learning through machine learning: The AIISE framework. / Roski, Marvin; Hoppe, Anett; Nehring, Andreas.
Uses of Artificial Intelligence in STEM Education. Oxford University Press, 2024. p. 547-567.

Research output: Chapter in book/report/conference proceedingContribution to book/anthologyResearchpeer review

Roski, M, Hoppe, A & Nehring, A 2024, Supporting inclusive science learning through machine learning: The AIISE framework. in Uses of Artificial Intelligence in STEM Education. Oxford University Press, pp. 547-567. https://doi.org/10.1093/oso/9780198882077.003.0024
Roski, M., Hoppe, A., & Nehring, A. (2024). Supporting inclusive science learning through machine learning: The AIISE framework. In Uses of Artificial Intelligence in STEM Education (pp. 547-567). Oxford University Press. https://doi.org/10.1093/oso/9780198882077.003.0024
Roski M, Hoppe A, Nehring A. Supporting inclusive science learning through machine learning: The AIISE framework. In Uses of Artificial Intelligence in STEM Education. Oxford University Press. 2024. p. 547-567 doi: 10.1093/oso/9780198882077.003.0024
Roski, Marvin ; Hoppe, Anett ; Nehring, Andreas. / Supporting inclusive science learning through machine learning : The AIISE framework. Uses of Artificial Intelligence in STEM Education. Oxford University Press, 2024. pp. 547-567
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