A Mixed Assessment for the Science Learning via a Bayesian Network Representation

Authors

  • Zhidong Zhang Author
  • Angelica Guanzon Author

DOI:

https://doi.org/10.20849/jed.v6i5.1309

Keywords:

science learning, Bayesian network representation, student modeling, diagnostically cognitive

Abstract

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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Published

2022-11-11

Issue

Section

Articles

How to Cite

A Mixed Assessment for the Science Learning via a Bayesian Network Representation. (2022). Journal of Education and Development, 6(5), p1. https://doi.org/10.20849/jed.v6i5.1309

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