
doi: 10.1007/bf02295596
A number of models for categorical item response data have been proposed in recent years. The models appear to be quite different. However, they may usefully be organized as members of only three distinct classes, within which the models are distinguished only by assumptions and constraints on their parameters. “Difference models” are appropriate for ordered responses, “divide-by-total” models may be used for either ordered or nominal responses, and “left-side added” models are used for multiple-choice responses with guessing. The details of the taxonomy and the models are described in this paper.
multiple choice responses with guessing, test theory, left-side added models, nominal responses, Difference models, divide-by-total models, ordered responses, categorical item response data, logistic models, Applications of statistics to psychology
multiple choice responses with guessing, test theory, left-side added models, nominal responses, Difference models, divide-by-total models, ordered responses, categorical item response data, logistic models, Applications of statistics to psychology
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