MOOCs Meet Measurement Theory: A Topic-Modelling Approach
Jiazhen He, Benjamin I. P. Rubinstein, James Bailey, Rui Zhang, Sandra, Milligan, Jeffrey Chan

TL;DR
This paper introduces a novel method combining measurement theory and topic modeling to quantify student skills in MOOCs through forum participation, enabling scalable psychometric analysis.
Contribution
It develops a regularized topic modeling approach that incorporates Guttman scale constraints for automatic psychometric measurement in online education.
Findings
Effective in identifying well-scaled forum topics
Demonstrates scalability across multiple MOOCs
Improves interpretability of student skill measurements
Abstract
This paper adapts topic models to the psychometric testing of MOOC students based on their online forum postings. Measurement theory from education and psychology provides statistical models for quantifying a person's attainment of intangible attributes such as attitudes, abilities or intelligence. Such models infer latent skill levels by relating them to individuals' observed responses on a series of items such as quiz questions. The set of items can be used to measure a latent skill if individuals' responses on them conform to a Guttman scale. Such well-scaled items differentiate between individuals and inferred levels span the entire range from most basic to the advanced. In practice, education researchers manually devise items (quiz questions) while optimising well-scaled conformance. Due to the costly nature and expert requirements of this process, psychometric testing has found…
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Taxonomy
TopicsOnline Learning and Analytics · Topic Modeling · Advanced Graph Neural Networks
