The effectiveness of multidimensional scaling (MDS) techniques in recovering the underlying dimensionality of dichotomously-scored data was examined for unidimensional and multidimensional data. Thirty-three data sets of varying numbers of dimensions with differing patterns of item discrimination were generated using a multidimensional latent trait model in a Monte Carlo simulation study. Margin-sensitive measures (agreement, phi, and kappa) and margin-free measures (Φ/ Φ(max), Yule's Q, and the tetrachoric correlation) were used as measures of similarity and the resulting matrices were scaled in one through five dimensions. Values of the stress coefficient, S₁, S₁ by dimensionality plots, and plot configurations were examined to determine ...
The application of principal component analysis and parallel analysis to smoothed tet-rachoric corre...
<div><p>The analysis of polychoric correlations via principal component analysis and exploratory fac...
Evidence of test dimensionality supports test scoring, and it is essential to construct validity. Ye...
This study was undertaken to compare non-metric multidimensional scaling (MDS) and factor analysis (...
The assessment of dimensionality of data is important to item response theory (IRT) modelling and ot...
This study compared four methods of determining the dimensionality of a set of test items: linear fa...
A monte carlo investigation of three approaches to assessing the dimensionality of binary items used...
A new index based on the conditional covariance of item scores given a latent variable is defined an...
Parallel analysis (PA) is an often-recommended approach for assessment of the dimensionality of a va...
This thesis is concerned with two critical issues facing the testing industry today: dimensionality ...
The assessment of the number of dimensions and the dimensionality structure of questionnaire data is...
The assessment of the number of dimensions and the dimensionality structure of questionnaire data is...
Four methods for determining the dimensionality of a set of test items were compared: (1) linear fac...
Mokken scale analysis can be used for scaling under nonparametric item response theory models. The r...
A simulation investigated use of the difficulty parameter (Bejar, 1980) to evaluate item unidimensi...
The application of principal component analysis and parallel analysis to smoothed tet-rachoric corre...
<div><p>The analysis of polychoric correlations via principal component analysis and exploratory fac...
Evidence of test dimensionality supports test scoring, and it is essential to construct validity. Ye...
This study was undertaken to compare non-metric multidimensional scaling (MDS) and factor analysis (...
The assessment of dimensionality of data is important to item response theory (IRT) modelling and ot...
This study compared four methods of determining the dimensionality of a set of test items: linear fa...
A monte carlo investigation of three approaches to assessing the dimensionality of binary items used...
A new index based on the conditional covariance of item scores given a latent variable is defined an...
Parallel analysis (PA) is an often-recommended approach for assessment of the dimensionality of a va...
This thesis is concerned with two critical issues facing the testing industry today: dimensionality ...
The assessment of the number of dimensions and the dimensionality structure of questionnaire data is...
The assessment of the number of dimensions and the dimensionality structure of questionnaire data is...
Four methods for determining the dimensionality of a set of test items were compared: (1) linear fac...
Mokken scale analysis can be used for scaling under nonparametric item response theory models. The r...
A simulation investigated use of the difficulty parameter (Bejar, 1980) to evaluate item unidimensi...
The application of principal component analysis and parallel analysis to smoothed tet-rachoric corre...
<div><p>The analysis of polychoric correlations via principal component analysis and exploratory fac...
Evidence of test dimensionality supports test scoring, and it is essential to construct validity. Ye...