Scoring ordinal variables for constructing composite indicators

In order to provide composite indicators of latent variables, for example of customer satisfaction, it is opportune to identify the structure of the latent variable, in terms of the assignment of items to the subscales defining the latent variable. Adopting the reflective model, the impact of four d...

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Main Author: Marica Manisera
Format: Article
Language:English
Published: University of Bologna 2013-05-01
Series:Statistica
Online Access:http://rivista-statistica.unibo.it/article/view/3512
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spelling doaj-29093384612d4466b55cecb2766daf2a2020-11-24T22:56:51ZengUniversity of BolognaStatistica0390-590X1973-22012013-05-0167330932410.6092/issn.1973-2201/35123259Scoring ordinal variables for constructing composite indicatorsMarica Manisera0Department of Quantitative Methods - University of BresciaIn order to provide composite indicators of latent variables, for example of customer satisfaction, it is opportune to identify the structure of the latent variable, in terms of the assignment of items to the subscales defining the latent variable. Adopting the reflective model, the impact of four different methods of scoring ordinal variables on the identification of the true structure of latent variables is investigated. A simulation study composed of 5 steps is conducted: (1) simulation of population data with continuous variables measuring a two-dimensional latent variable with known structure; (2) draw of a number of random samples; (3) discretization of the continuous variables according to different distributional forms; (4) quantification of the ordinal variables obtained in step (3) according to different methods; (5) construction of composite indicators and verification of the correct assignment of variables to subscales by the multiple group method and the factor analysis. Results show that the considered scoring methods have similar performances in assigning items to subscales, and that, when the latent variable is multinormal, the distributional form of the observed ordinal variables is not determinant in suggesting the best scoring method to use.http://rivista-statistica.unibo.it/article/view/3512
collection DOAJ
language English
format Article
sources DOAJ
author Marica Manisera
spellingShingle Marica Manisera
Scoring ordinal variables for constructing composite indicators
Statistica
author_facet Marica Manisera
author_sort Marica Manisera
title Scoring ordinal variables for constructing composite indicators
title_short Scoring ordinal variables for constructing composite indicators
title_full Scoring ordinal variables for constructing composite indicators
title_fullStr Scoring ordinal variables for constructing composite indicators
title_full_unstemmed Scoring ordinal variables for constructing composite indicators
title_sort scoring ordinal variables for constructing composite indicators
publisher University of Bologna
series Statistica
issn 0390-590X
1973-2201
publishDate 2013-05-01
description In order to provide composite indicators of latent variables, for example of customer satisfaction, it is opportune to identify the structure of the latent variable, in terms of the assignment of items to the subscales defining the latent variable. Adopting the reflective model, the impact of four different methods of scoring ordinal variables on the identification of the true structure of latent variables is investigated. A simulation study composed of 5 steps is conducted: (1) simulation of population data with continuous variables measuring a two-dimensional latent variable with known structure; (2) draw of a number of random samples; (3) discretization of the continuous variables according to different distributional forms; (4) quantification of the ordinal variables obtained in step (3) according to different methods; (5) construction of composite indicators and verification of the correct assignment of variables to subscales by the multiple group method and the factor analysis. Results show that the considered scoring methods have similar performances in assigning items to subscales, and that, when the latent variable is multinormal, the distributional form of the observed ordinal variables is not determinant in suggesting the best scoring method to use.
url http://rivista-statistica.unibo.it/article/view/3512
work_keys_str_mv AT maricamanisera scoringordinalvariablesforconstructingcompositeindicators
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