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Bridging the gap between qualitative and quantitative assessment in science education research with machine learning

  • Science education researchers typically face a trade-off between more quantitatively oriented confirmatory testing of hypotheses, or more qualitatively oriented exploration of novel hypotheses. More recently, open-ended, constructed response items were used to combine both approaches and advance assessment of complex science-related skills and competencies. For example, research in assessing science teachers' noticing and attention to classroom events benefitted from more open-ended response formats because teachers can present their own accounts. Then, open-ended responses are typically analyzed with some form of content analysis. However, language is noisy, ambiguous, and unsegmented and thus open-ended, constructed responses are complex to analyze. Uncovering patterns in these responses would benefit from more principled and systematic analysis tools. Consequently, computer-based methods with the help of machine learning and natural language processing were argued to be promising means to enhance assessment of noticing skills withScience education researchers typically face a trade-off between more quantitatively oriented confirmatory testing of hypotheses, or more qualitatively oriented exploration of novel hypotheses. More recently, open-ended, constructed response items were used to combine both approaches and advance assessment of complex science-related skills and competencies. For example, research in assessing science teachers' noticing and attention to classroom events benefitted from more open-ended response formats because teachers can present their own accounts. Then, open-ended responses are typically analyzed with some form of content analysis. However, language is noisy, ambiguous, and unsegmented and thus open-ended, constructed responses are complex to analyze. Uncovering patterns in these responses would benefit from more principled and systematic analysis tools. Consequently, computer-based methods with the help of machine learning and natural language processing were argued to be promising means to enhance assessment of noticing skills with constructed response formats. In particular, pretrained language models recently advanced the study of linguistic phenomena and thus could well advance assessment of complex constructs through constructed response items. This study examines potentials and challenges of a pretrained language model-based clustering approach to assess preservice physics teachers' attention to classroom events as elicited through open-ended written descriptions. It was examined to what extent the clustering approach could identify meaningful patterns in the constructed responses, and in what ways textual organization of the responses could be analyzed with the clusters. Preservice physics teachers (N = 75) were instructed to describe a standardized, video-recorded teaching situation in physics. The clustering approach was used to group related sentences. Results indicate that the pretrained language model-based clustering approach yields well-interpretable, specific, and robust clusters, which could be mapped to physics-specific and more general contents. Furthermore, the clusters facilitate advanced analysis of the textual organization of the constructed responses. Hence, we argue that machine learning and natural language processing provide science education researchers means to combine exploratory capabilities of qualitative research methods with the systematicity of quantitative methods.zeige mehrzeige weniger

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Metadaten
Verfasserangaben:Peter WulffORCiD, David BuschhüterORCiDGND, Andrea WestphalORCiDGND, Lukas MientusORCiDGND, Anna NowakORCiDGND, Andreas BorowskiORCiDGND
DOI:https://doi.org/10.1007/s10956-022-09969-w
ISSN:1059-0145
ISSN:1573-1839
Titel des übergeordneten Werks (Englisch):Journal of science education and technology
Untertitel (Englisch):a case for pretrained language models-based clustering
Verlag:Springer
Verlagsort:Dordrecht
Publikationstyp:Wissenschaftlicher Artikel
Sprache:Englisch
Datum der Erstveröffentlichung:01.06.2022
Erscheinungsjahr:2022
Datum der Freischaltung:21.02.2024
Freies Schlagwort / Tag:Attention to classroom events; ML; NLP; Noticing
Band:31
Ausgabe:4
Seitenanzahl:24
Erste Seite:490
Letzte Seite:513
Fördernde Institution:Projekt DEAL; Federal Ministry of Education and Research
Organisationseinheiten:Humanwissenschaftliche Fakultät / Strukturbereich Bildungswissenschaften / Department Erziehungswissenschaft
DDC-Klassifikation:3 Sozialwissenschaften / 37 Bildung und Erziehung / 370 Bildung und Erziehung
Peer Review:Referiert
Publikationsweg:Open Access / Hybrid Open-Access
Lizenz (Deutsch):License LogoCC-BY - Namensnennung 4.0 International
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