Identifiability of a model for discrete frequency distributions with a multidimensional parameter space (Q495370)
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scientific article; zbMATH DE number 6480468
| Language | Label | Description | Also known as |
|---|---|---|---|
| English | Identifiability of a model for discrete frequency distributions with a multidimensional parameter space |
scientific article; zbMATH DE number 6480468 |
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Identifiability of a model for discrete frequency distributions with a multidimensional parameter space (English)
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10 September 2015
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The main aims of this paper are twofold. In the first part the authors shortly describe the problem of identifiability of a model for discrete frequency distributions with a multidimensional parameter space using the so-called CUB (combination of shifted binomial and discrete uniform variables) mixture models introduced recently by \textit{M. Iannario} [Metron 68, No. 1, 87--94 (2010; Zbl 1301.62017)]. In the second part, being the most important contribution of this paper, a general approach described previously is applied to investigate the identifiability of nonlinear CUB (NLCUB) models. While CUB models fit rating and/or ranking data by means of a mixture of uniform and shifted binomial random variables, the main innovation of NLCUB models is that they can be used to model rating data with a non-constant intensity probabilities, i.e. probabilities moving from one rating to the next during the decision process. First, the authors discuss issues of parameter estimation of NLCUB models. Later, the conditions under which the models are identifiable are given. A short numerical study is included and several open issues are concisely discussed.
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identifiability
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mixture distributions
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Likert scales
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categorical ordinal variables
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rating data
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nonlinear CUB
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