Bayesian factor analysis for mixed data on management studies

Purpose – Factor analysis is the most used tool in organizational research and its widespread use in scale validations contribute to decision-making in management. However, standard factor analysis is not always applied correctly mainly due to the misuse of ordinal data as interval data and the inad...

Full description

Bibliographic Details
Main Authors: Pedro Albuquerque, Gisela Demo, Solange Alfinito, Kesia Rozzett
Format: Article
Language:English
Published: Emerald Publishing 2019-12-01
Series:RAUSP Management Journal
Subjects:
Online Access:https://www.emerald.com/insight/content/doi/10.1108/RAUSP-05-2019-0108/full/pdf?title=bayesian-factor-analysis-for-mixed-data-on-management-studies
_version_ 1811239308984582144
author Pedro Albuquerque
Gisela Demo
Solange Alfinito
Kesia Rozzett
author_facet Pedro Albuquerque
Gisela Demo
Solange Alfinito
Kesia Rozzett
author_sort Pedro Albuquerque
collection DOAJ
description Purpose – Factor analysis is the most used tool in organizational research and its widespread use in scale validations contribute to decision-making in management. However, standard factor analysis is not always applied correctly mainly due to the misuse of ordinal data as interval data and the inadequacy of the former for classical factor analysis. The purpose of this paper is to present and apply the Bayesian factor analysis for mixed data (BFAMD) in the context of empirical using the Bayesian paradigm for the construction of scales. Design/methodology/approach – Ignoring the categorical nature of some variables often used in management studies, as the popular Likert scale, may result in a model with false accuracy and possibly biased estimates. To address this issue, Quinn (2004) proposed a Bayesian factor analysis model for mixed data, which is capable of modeling ordinal (qualitative measure) and continuous data (quantitative measure) jointly and allows the inclusion of qualitative information through prior distributions for the parameters’ model. This model, adopted here, presents considering advantages and allows the estimation of the posterior distribution for the latent variables estimated, making the process of inference easier. Findings – The results show that BFAMD is an effective approach for scale validation in management studies making both exploratory and confirmatory analyses possible for the estimated factors and also allowing the analysts to insert a priori information regardless of the sample size, either by using the credible intervals for Factor Loadings or by conducting specific hypotheses tests. The flexibility of the Bayesian approach presented is counterbalanced by the fact that the main estimates used in factor analysis as uniqueness and communalities commonly lose their usual interpretation due to the choice of using prior distributions. Originality/value – Considering that the development of scales through factor analysis aims to contribute to appropriate decision-making in management and the increasing misuse of ordinal scales as interval in organizational studies, this proposal seems to be effective for mixed data analyses. The findings found here are not intended to be conclusive or limiting but offer a useful starting point from which further theoretical and empirical research of Bayesian factor analysis can be built.
first_indexed 2024-04-12T12:57:30Z
format Article
id doaj.art-fa172f94ae8b45989e97e3291bcde6fd
institution Directory Open Access Journal
issn 2531-0488
language English
last_indexed 2024-04-12T12:57:30Z
publishDate 2019-12-01
publisher Emerald Publishing
record_format Article
series RAUSP Management Journal
spelling doaj.art-fa172f94ae8b45989e97e3291bcde6fd2022-12-22T03:32:16ZengEmerald PublishingRAUSP Management Journal2531-04882019-12-0154443044510.1108/RAUSP-05-2019-0108632273Bayesian factor analysis for mixed data on management studiesPedro Albuquerque0Gisela Demo1Solange Alfinito2Kesia Rozzett3Business Administration, Universidade de Brasilia, Brasilia, BrazilBusiness Administration, Universidade de Brasilia, Brasilia, BrazilBusiness Administration, Universidade de Brasilia, Brasilia, BrazilPrograma de Pós-Graduação em Administração, University of Brasilia, Brasília, BrazilPurpose – Factor analysis is the most used tool in organizational research and its widespread use in scale validations contribute to decision-making in management. However, standard factor analysis is not always applied correctly mainly due to the misuse of ordinal data as interval data and the inadequacy of the former for classical factor analysis. The purpose of this paper is to present and apply the Bayesian factor analysis for mixed data (BFAMD) in the context of empirical using the Bayesian paradigm for the construction of scales. Design/methodology/approach – Ignoring the categorical nature of some variables often used in management studies, as the popular Likert scale, may result in a model with false accuracy and possibly biased estimates. To address this issue, Quinn (2004) proposed a Bayesian factor analysis model for mixed data, which is capable of modeling ordinal (qualitative measure) and continuous data (quantitative measure) jointly and allows the inclusion of qualitative information through prior distributions for the parameters’ model. This model, adopted here, presents considering advantages and allows the estimation of the posterior distribution for the latent variables estimated, making the process of inference easier. Findings – The results show that BFAMD is an effective approach for scale validation in management studies making both exploratory and confirmatory analyses possible for the estimated factors and also allowing the analysts to insert a priori information regardless of the sample size, either by using the credible intervals for Factor Loadings or by conducting specific hypotheses tests. The flexibility of the Bayesian approach presented is counterbalanced by the fact that the main estimates used in factor analysis as uniqueness and communalities commonly lose their usual interpretation due to the choice of using prior distributions. Originality/value – Considering that the development of scales through factor analysis aims to contribute to appropriate decision-making in management and the increasing misuse of ordinal scales as interval in organizational studies, this proposal seems to be effective for mixed data analyses. The findings found here are not intended to be conclusive or limiting but offer a useful starting point from which further theoretical and empirical research of Bayesian factor analysis can be built.https://www.emerald.com/insight/content/doi/10.1108/RAUSP-05-2019-0108/full/pdf?title=bayesian-factor-analysis-for-mixed-data-on-management-studiesfactor analysisbayesian paradigmquali-quant designscale validations
spellingShingle Pedro Albuquerque
Gisela Demo
Solange Alfinito
Kesia Rozzett
Bayesian factor analysis for mixed data on management studies
RAUSP Management Journal
factor analysis
bayesian paradigm
quali-quant design
scale validations
title Bayesian factor analysis for mixed data on management studies
title_full Bayesian factor analysis for mixed data on management studies
title_fullStr Bayesian factor analysis for mixed data on management studies
title_full_unstemmed Bayesian factor analysis for mixed data on management studies
title_short Bayesian factor analysis for mixed data on management studies
title_sort bayesian factor analysis for mixed data on management studies
topic factor analysis
bayesian paradigm
quali-quant design
scale validations
url https://www.emerald.com/insight/content/doi/10.1108/RAUSP-05-2019-0108/full/pdf?title=bayesian-factor-analysis-for-mixed-data-on-management-studies
work_keys_str_mv AT pedroalbuquerque bayesianfactoranalysisformixeddataonmanagementstudies
AT giselademo bayesianfactoranalysisformixeddataonmanagementstudies
AT solangealfinito bayesianfactoranalysisformixeddataonmanagementstudies
AT kesiarozzett bayesianfactoranalysisformixeddataonmanagementstudies