Main Article Content

Abstract

Learning trajectory of set is a learning path to get concept of set. However, several teachers did not combine methods, approaches, and ideas in their practical deliveries. This situation becomes a concern for teachers to handle since it will affect the rule without reason so that the accepted concept will not last long in students’ memory. This study aim to describe the learning trajectory using RME models to construct the concept of set. Hypothetical learning trajectory (HLT) was designed using a qualitative method with the realistic mathematics education (RME) of Gravemeijer model as the activity stage begin from preparing for the experiment, pilot experiment, teaching experiment and retrospective analysis. The designed HLT consisted of an objective, activity, and conjecture. This study achieved an understanding of the set concept with applying RME design. By providing examples of contextual mathematics that take place in the learning environment, these outcomes were achieved. Then using media like set cards to model mathematics so that students can advance their own knowledge to the level of formal mathematics. Therefore, the RME-based HLT design can be a solution to obtain the concept of set, primarily in domain definition and set notation to produce a learning trajectory.


DOI: https://doi.org/10.22342/jpm.17.1.19077.89-102

Keywords

Learning Trajectory Realistic Mathematics Education Set

Article Details

How to Cite
Juana, N. A., Kaswoto, J., Sugiman, & Hidayat, A. A. A. (2024). The Learning Trajectory of Set Concept Using Realistic Mathematics Education (RME). Jurnal Pendidikan Matematika, 17(1), 89–102. Retrieved from https://jpm.ejournal.unsri.ac.id/index.php/jpm/article/view/182

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