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Journal ArticleDOI

A Basis for Multidimensional Item Response Theory

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TLDR
Independent clusters, as treated in classical linear factor analysis, provide a desirable basis for multidimensional item response models, yielding interpretable and useful results as mentioned in this paper, while establishing a pattern for the item parameter matrix that provides identifiability conditions and facilitates interpretation of the traits.
Abstract
Independent clusters, as treated in classical linear factor analysis, provide a desirable basis for multidimensional item response models, yielding interpretable and useful results. The independentclusters basis serves to determine dimensionality, while establishing a pattern for the item parameter matrix that provides identifiability conditions and facilitates interpretation of the traits. It also provides a natural extension of known results on convergent/discriminant “construct” validity to binary items, allowing the quantification of the validity of test and subtest scores. The independent-clusters basis simplifies item/test response and information hypersurfaces, which cannot otherwise be easily studied except in the trivial case of two dimensions, and provides estimates of latent traits with uncorrelated measurement errors. In addition, the affine transformation needed for the informative analysis of the causes of differential item functioning is simplified using the independent-clusters basis. Thes...

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Citations
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Journal ArticleDOI

Bifactor Models and Rotations: Exploring the Extent to Which Multidimensional Data Yield Univocal Scale Scores

TL;DR: It is suggested that in many contexts, multidimensional data can yield interpretable scale scores and be appropriately fitted to unidimensional IRT models.
ReportDOI

Multiple factor analysis.

R.C. Durfee
Book ChapterDOI

Multidimensional Item Response Theory

TL;DR: In this paper, the authors describe the commonly used multidimensional item response theory (MIRT) models and the important methods needed for their practical application, including ways to determine the number of dimensions required to adequately model data, procedures for estimating model parameters, ways to define the space for a MIRT model, and procedures for transforming calibrations from different samples to put them in the same space.
Journal ArticleDOI

El Análisis Factorial Exploratorio de los Ítems: una guía práctica, revisada y actualizada

TL;DR: The objective is to offer the interested applied researcher updated guidance on how to perform an Exploratory Item Factor Analysis, according to the "post-Little Jiffy" psychometrics.
Journal ArticleDOI

The role of the bifactor model in resolving dimensionality issues in health outcomes measures

TL;DR: The bifactor model provides a valuable tool for exploring dimensionality related questions and is compared with multidimensional IRT models (MIRT) in contexts where it is most productively used.
References
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Journal ArticleDOI

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TL;DR: In this paper, a general formula (α) of which a special case is the Kuder-Richardson coefficient of equivalence is shown to be the mean of all split-half coefficients resulting from different splittings of a test, therefore an estimate of the correlation between two random samples of items from a universe of items like those in the test.
Journal ArticleDOI

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Journal ArticleDOI

Convergent and discriminant validation by the multitrait-multimethod matrix.

TL;DR: This transmutability of the validation matrix argues for the comparisons within the heteromethod block as the most generally relevant validation data, and illustrates the potential interchangeability of trait and method components.
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Testing Structural Equation Models

TL;DR: In this paper, Bollen et al. proposed a model fitting metric for Structural Equation Models, which is based on the Monte Carlo evaluation of Goodness-of-Fit measures.