The Course Difficulty Analysis Cookbook
Frederik Baucks, Robin Schmucker, Laurenz Wiskott

TL;DR
This paper reviews and compares methods for assessing course difficulty using GPA and latent trait models, emphasizing fairness, reliability, and practical applications in curriculum analytics.
Contribution
It provides the first comprehensive review, practical tutorial, and open-source tools for measuring course difficulty, addressing bias and covariates.
Findings
Compared existing difficulty measures based on GPA and latent trait models.
Demonstrated applications in monitoring difficulty trends and detecting disparities.
Provided tools and datasets for reproducibility and further research.
Abstract
Curriculum analytics (CA) studies curriculum structure and student data to ensure the quality of educational programs. An essential aspect is studying course properties, which involves assigning each course a representative difficulty value. This is critical for several aspects of CA, such as quality control (e.g., monitoring variations over time), course comparisons (e.g., articulation), and course recommendation (e.g., advising). Measuring course difficulty requires careful consideration of multiple factors: First, when difficulty measures are sensitive to the performance level of enrolled students, it can bias interpretations by overlooking student diversity. By assessing difficulty independently of enrolled students' performances, we can reduce the risk of bias and enable fair, representative assessments of difficulty. Second, from a measurement theoretic perspective, the…
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