According to the classical measurement theory [2], the reliability of the relationship between a latent variable describing a true measure and its corresponding manifest proxies can be assessed through the Cronbach’s Alpha index. The Cronbach’s Alpha index can be used for parallel measures and represents a lower bound for the reliability value in presence of congeneric measures, for which the assessment can properly be made only ex post, once the loading coefficients have been estimated [3], e.g. by means of a structural equation model with latent variables (SEM-LV). Let us assume the existence of an a-priori segmentation, based upon a categorical variable Z. We want to test the reliability of the construct over all the groups. This corresponds to the null joint hypothesis that the loadings are equal within each group as well as they do not vary among groups. Otherwise different measurement models need to be defined over groups. A test for measuring group differences in reliability is presented in [5], basing on differences of loading estimates in a SEM-LV framework. We consider a formulation of the Cronbach’s Alpha coefficient according to the decomposition of pairwise covariances in a clustered framework.

Nai Ruscone, M., Boari, G., Cantaluppi, G., Scale Reliability Evaluation for a-priori Clustered Data, in Vicari, D., Okada, A., Ragozini, G., Weihs, C. (ed.), Analysis and Modeling of Complex Data in Behavioral and Social Sciences, Springer, Cham 2014: <<STUDIES IN CLASSIFICATION, DATA ANALYSIS, AND KNOWLEDGE ORGANIZATION>>, 37- 45 [http://hdl.handle.net/10807/56086]

Scale Reliability Evaluation for a-priori Clustered Data

Nai Ruscone, Marta;Boari, Giuseppe;Cantaluppi, Gabriele
2014

Abstract

According to the classical measurement theory [2], the reliability of the relationship between a latent variable describing a true measure and its corresponding manifest proxies can be assessed through the Cronbach’s Alpha index. The Cronbach’s Alpha index can be used for parallel measures and represents a lower bound for the reliability value in presence of congeneric measures, for which the assessment can properly be made only ex post, once the loading coefficients have been estimated [3], e.g. by means of a structural equation model with latent variables (SEM-LV). Let us assume the existence of an a-priori segmentation, based upon a categorical variable Z. We want to test the reliability of the construct over all the groups. This corresponds to the null joint hypothesis that the loadings are equal within each group as well as they do not vary among groups. Otherwise different measurement models need to be defined over groups. A test for measuring group differences in reliability is presented in [5], basing on differences of loading estimates in a SEM-LV framework. We consider a formulation of the Cronbach’s Alpha coefficient according to the decomposition of pairwise covariances in a clustered framework.
2014
Inglese
Analysis and Modeling of Complex Data in Behavioral and Social Sciences
978-3-319-06691-2
Nai Ruscone, M., Boari, G., Cantaluppi, G., Scale Reliability Evaluation for a-priori Clustered Data, in Vicari, D., Okada, A., Ragozini, G., Weihs, C. (ed.), Analysis and Modeling of Complex Data in Behavioral and Social Sciences, Springer, Cham 2014: <<STUDIES IN CLASSIFICATION, DATA ANALYSIS, AND KNOWLEDGE ORGANIZATION>>, 37- 45 [http://hdl.handle.net/10807/56086]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10807/56086
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