CLAISep 27, 2025

Text-Based Approaches to Item Difficulty Modeling in Large-Scale Assessments: A Systematic Review

arXiv:2509.23486v17 citationsh-index: 22
Originality Synthesis-oriented
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This provides a benchmark for researchers developing automated tools to reduce the time and cost of traditional item difficulty modeling in educational testing.

This systematic review analyzed 37 studies on using text-based machine learning approaches to predict item difficulty in large-scale assessments, finding that these methods can achieve RMSE as low as 0.165, Pearson correlation up to 0.87, and accuracy up to 0.806.

Item difficulty plays a crucial role in test performance, interpretability of scores, and equity for all test-takers, especially in large-scale assessments. Traditional approaches to item difficulty modeling rely on field testing and classical test theory (CTT)-based item analysis or item response theory (IRT) calibration, which can be time-consuming and costly. To overcome these challenges, text-based approaches leveraging machine learning and language models, have emerged as promising alternatives. This paper reviews and synthesizes 37 articles on automated item difficulty prediction in large-scale assessment settings published through May 2025. For each study, we delineate the dataset, difficulty parameter, subject domain, item type, number of items, training and test data split, input, features, model, evaluation criteria, and model performance outcomes. Results showed that although classic machine learning models remain relevant due to their interpretability, state-of-the-art language models, using both small and large transformer-based architectures, can capture syntactic and semantic patterns without the need for manual feature engineering. Uniquely, model performance outcomes were summarized to serve as a benchmark for future research and overall, text-based methods have the potential to predict item difficulty with root mean square error (RMSE) as low as 0.165, Pearson correlation as high as 0.87, and accuracy as high as 0.806. The review concludes by discussing implications for practice and outlining future research directions for automated item difficulty modeling.

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