Advancing clustering methods in physics education research: A case for mixture models
Open Access
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Type Preprint
Year 2025
Language English
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Research Methods

Advancing clustering methods in physics education research: A case for mixture models

Minghui Wang , Meagan Sundstrom, Karen Nylund-Gibson, Marsha Ing
External / Open Access
2025 arXiv Preprint

Abstract

Clustering methods are often used in physics education research (PER) to identify subgroups of individuals within a population who share similar response patterns or characteristics. K-means (or k-modes, for categorical data) is one of the most commonly used clustering methods in PER. This algorithm, however, is not model-based: it relies on algorithmic partitioning and assigns individuals to subgroups with definite membership. Researchers must also conduct post-hoc analyses to relate subgroup membership to other variables. Mixture models offer a model-based alternative that accounts for classification errors and allows researchers to directly integrate subgroup membership into a broader latent variable framework. In this paper, we outline the theoretical similarities and differences between k-modes clustering and latent class analysis (one type of mixture model for categorical data). We also present parallel analyses using each method to address the same research questions in order to demonstrate these similarities and differences. We provide the data and R code to replicate the worked example presented in the paper for researchers interested in using mixture models.
Full Title Advancing clustering methods in physics education research: A case for mixture models
Primary Author Minghui Wang
Co-Authors Meagan Sundstrom, Karen Nylund-Gibson, Marsha Ing
Publication Type Preprint
Year 2025
Journal arXiv Preprint
Category Research Methods
Institution External / Open Access
Access Open Access
Added to Library March 24, 2026

Cite This Publication

APA
Minghui Wang, Meagan Sundstrom, Karen Nylund-Gibson, Marsha Ing (2025). *Advancing clustering methods in physics education research: A case for mixture models*. External / Open Access.
MLA
Minghui Wang. *Advancing clustering methods in physics education research: A case for mixture models*. External / Open Access, 2025.

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