In this article, we present the command cub, which fits ordinal rating data using combination of uniform and binomial (CUB) models, a class of finite mixture distributions accounting for both feeling and uncertainty of the response process. CUB identifies the components that define the mixture in the baseline model specification. We apply maximum likelihood methods to estimate feeling and uncertainty parameters, which are possibly explained in terms of covariates. An extension to inflated CUB models is discussed. We also present a subcommand, scattercub, for visualization of results. We then illustrate the use of cub using a case study on students’ satisfaction for the orientation services provided by the University of Naples Federico II in Italy.

Fitting mixture models for feeling and uncertainty for rating data analysis / Cerulli, Giovanni; Simone, Rosaria; DI IORIO, Francesca; Piccolo, Domenico; Baum Christopher, F.. - In: THE STATA JOURNAL. - ISSN 1536-867X. - 22:1(2022), pp. 195-223. [10.1177/1536867X221083927]

Fitting mixture models for feeling and uncertainty for rating data analysis

Cerulli Giovanni;Simone Rosaria
;
Di Iorio Francesca;Piccolo Domenico;
2022

Abstract

In this article, we present the command cub, which fits ordinal rating data using combination of uniform and binomial (CUB) models, a class of finite mixture distributions accounting for both feeling and uncertainty of the response process. CUB identifies the components that define the mixture in the baseline model specification. We apply maximum likelihood methods to estimate feeling and uncertainty parameters, which are possibly explained in terms of covariates. An extension to inflated CUB models is discussed. We also present a subcommand, scattercub, for visualization of results. We then illustrate the use of cub using a case study on students’ satisfaction for the orientation services provided by the University of Naples Federico II in Italy.
2022
Fitting mixture models for feeling and uncertainty for rating data analysis / Cerulli, Giovanni; Simone, Rosaria; DI IORIO, Francesca; Piccolo, Domenico; Baum Christopher, F.. - In: THE STATA JOURNAL. - ISSN 1536-867X. - 22:1(2022), pp. 195-223. [10.1177/1536867X221083927]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11588/881853
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