The volume first introduces the theoretical underpinnings of ML methods and their connections to methodological commitments in science education research. It then presents exemplar case studies of ML uses in both formal and informal science education settings. These case studies include open-source data, executable programming code, and explanations of the methodological criteria and commitments guiding ML use in each case. The textbook concludes with a discussion of opportunities and potential future directions for ML in science education.
This textbook is a valuable resource for science education lecturers, researchers, under-graduate, graduate and postgraduate students seeking new ways to apply ML in their work.
The volume first introduces the theoretical underpinnings of ML methods and their connections to methodological commitments in science education research. It then presents exemplar case studies of ML uses in both formal and informal science education settings. These case studies include open-source data, executable programming code, and explanations of the methodological criteria and commitments guiding ML use in each case. The textbook concludes with a discussion of opportunities and potential future directions for ML in science education.
This textbook is a valuable resource for science education lecturers, researchers, under-graduate, graduate and postgraduate students seeking new ways to apply ML in their work.

Applying Machine Learning in Science Education Research: When, How, and Why?
369
Applying Machine Learning in Science Education Research: When, How, and Why?
369Product Details
ISBN-13: | 9783031742262 |
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Publisher: | Springer Nature Switzerland |
Publication date: | 03/01/2025 |
Series: | Springer Texts in Education |
Edition description: | 2025 |
Pages: | 369 |
Product dimensions: | 6.10(w) x 9.25(h) x (d) |