Multidimensional Item Response Theory in the Style of Collaborative Filtering

被引:0
|
作者
Yoav Bergner
Peter Halpin
Jill-Jênn Vie
机构
[1] New York University,Steinhardt School of Culture, Education, and Human Development
[2] University of North Carolina-Chapel Hill,School of Education, Peabody Hall
[3] Inria,undefined
来源
Psychometrika | 2022年 / 87卷
关键词
item response theory; multidimensionality; machine learning; collaborative filtering; joint maximum likelihood;
D O I
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中图分类号
学科分类号
摘要
This paper presents a machine learning approach to multidimensional item response theory (MIRT), a class of latent factor models that can be used to model and predict student performance from observed assessment data. Inspired by collaborative filtering, we define a general class of models that includes many MIRT models. We discuss the use of penalized joint maximum likelihood to estimate individual models and cross-validation to select the best performing model. This model evaluation process can be optimized using batching techniques, such that even sparse large-scale data can be analyzed efficiently. We illustrate our approach with simulated and real data, including an example from a massive open online course. The high-dimensional model fit to this large and sparse dataset does not lend itself well to traditional methods of factor interpretation. By analogy to recommender-system applications, we propose an alternative “validation” of the factor model, using auxiliary information about the popularity of items consulted during an open-book examination in the course.
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页码:266 / 288
页数:22
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