A Mixed Assessment for the Science Learning via a Bayesian Network Representation
DOI:
https://doi.org/10.20849/jed.v6i5.1309Keywords:
science learning, Bayesian network representation, student modeling, diagnostically cognitiveAbstract
This study explored an alternative assessment model to examine Chemistry learners’ progress. “The Assessment of Problem-Solving in Chemistry Learning” as a model represented students’ mastery of chemistry study. The data were from journaling narratives and analyzed through cognitive task analysis. Based on the analyses, a student model was established, which represents the qualitative information in a structure, and provides a potential framework of the assessment model for the quantitative representation—a Bayesian network assessment model. The student’s performance was assessed via the Bayesian network assessment model, and classified into three categories: low level, middle level, and high level. The mastery level should be at least scored at and above 90.51/100 for Declarative, Procedural, and Strategic Knowledge respectively.
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© Journal of Education and Development. The copyright for all articles published in this journal is retained by the authors. All articles are published under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0). This license permits use, distribution, and reproduction in any medium, whether commercial or non-commercial, provided the original work is properly cited.