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Diagnostic Classification Models for Testlets: Methods and Theory. | LitMetric

AI Article Synopsis

  • This paper discusses the extension of the standard testlet DINA (T-DINA) model, focusing on the correlation between two latent structures: the attribute profile and the testlet effect, in diagnostic classification models (DCMs) used in education and psychology.
  • It establishes conditions for model identifiability and enhances the understanding of the standard T-DINA model.
  • The new model is tested using data from the 2015 Programme for International Student Assessment, showing improved goodness of fit compared to DINA and T-DINA, with additional simulations validating its performance.

Article Abstract

Diagnostic classification models (DCMs) have seen wide applications in educational and psychological measurement, especially in formative assessment. DCMs in the presence of testlets have been studied in recent literature. A key ingredient in the statistical modeling and analysis of testlet-based DCMs is the superposition of two latent structures, the attribute profile and the testlet effect. This paper extends the standard testlet DINA (T-DINA) model to accommodate the potential correlation between the two latent structures. Model identifiability is studied and a set of sufficient conditions are proposed. As a byproduct, the identifiability of the standard T-DINA is also established. The proposed model is applied to a dataset from the 2015 Programme for International Student Assessment. Comparisons are made with DINA and T-DINA, showing that there is substantial improvement in terms of the goodness of fit. Simulations are conducted to assess the performance of the new method under various settings.

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Source
http://dx.doi.org/10.1007/s11336-024-09962-9DOI Listing

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