Students’ performance dataset for using machine learning technique in physics education research

Abstract There is a need to help advance research on using machine learning and data mining techniques in physics education research (PER), which might still be difficult due to the unavailable dataset for the specific purpose of PER. The SPHERE (Students’ Performance Dataset in Physics Education Re...

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Main Authors: Purwoko Haryadi Santoso, Bayu Setiaji, Yohanes Kurniawan, Wahyudi, Syamsul Bahri, Fathurrahman, Mobinta Kusuma, Indah Urwatin Wusqo, Nuri Dewi Muldayanti, Arif Didik Kurniawan, Johan Syahbrudin
Format: Article
Language:English
Published: Nature Portfolio 2025-06-01
Series:Scientific Data
Online Access:https://doi.org/10.1038/s41597-025-04913-0
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Summary:Abstract There is a need to help advance research on using machine learning and data mining techniques in physics education research (PER), which might still be difficult due to the unavailable dataset for the specific purpose of PER. The SPHERE (Students’ Performance Dataset in Physics Education Research) is presented as an educational dataset of physics learning collected through research-based assessments (RBAs) established by the PER scholars. In this study, students’ performance in physics at four public high schools was probed in three learning domains. It encompassed students’ conceptual understanding, scientific ability, and learning attitude toward physics. The employed RBAs were identified based on the curriculum of physics contents taught to the eleventh-grade students in the ongoing academic year. In this paper, we provide an example that SPHERE could be insightful for training machine learning models to predict students’ performance at the end of the learning process. We also revealed that its predictive performance was superior to the former method of students’ performance prediction as labeled by the physics teachers.
ISSN:2052-4463