MLJan 12, 2015

SPRITE: A Response Model For Multiple Choice Testing

arXiv:1501.02844v11 citations
Originality Incremental advance
AI Analysis

This addresses the challenge of modeling multiple-choice exams with unknown distractor orderings for educational and psychological researchers, representing an incremental advance in item response theory.

The authors tackled the problem of analyzing unordered categorical response data in educational testing, where traditional models rely on strict ordering assumptions, and proposed SPRITE, which improved data fitting compared to existing models.

Item response theory (IRT) models for categorical response data are widely used in the analysis of educational data, computerized adaptive testing, and psychological surveys. However, most IRT models rely on both the assumption that categories are strictly ordered and the assumption that this ordering is known a priori. These assumptions are impractical in many real-world scenarios, such as multiple-choice exams where the levels of incorrectness for the distractor categories are often unknown. While a number of results exist on IRT models for unordered categorical data, they tend to have restrictive modeling assumptions that lead to poor data fitting performance in practice. Furthermore, existing unordered categorical models have parameters that are difficult to interpret. In this work, we propose a novel methodology for unordered categorical IRT that we call SPRITE (short for stochastic polytomous response item model) that: (i) analyzes both ordered and unordered categories, (ii) offers interpretable outputs, and (iii) provides improved data fitting compared to existing models. We compare SPRITE to existing item response models and demonstrate its efficacy on both synthetic and real-world educational datasets.

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