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The customer satisfaction in a reduced rank regression framework

Pietro Giorgio Lovaglio (Pietro Giorgio Lovaglio is Assistant Professor in the Department of Statistics, Faculty of Statistics, University of Milan‐Bicocca, Milan, Italy.)

The TQM Magazine

ISSN: 0954-478X

Article publication date: 1 February 2004

2375

Abstract

In this paper we propose a methodology for the estimation of customer satisfaction conceived as a latent variable specified in the American Customer Satisfaction Index (ACSI) structural model. The current proposal puts forward: the approaches of structural equations, since it involves the dual problem of indeterminacy of the latent scores and the normality assumed; the PLS approach, because of its drawbacks (shown in depth in the paper). The ACSI model will be estimated in a reduced rank regression (RRR) framework, showing that under a non restrictive hypothesis, shared by PLS, the structural model can be viewed as a RRR model between two blocks of manifest variables. Finally, in the paper an application is shown to assess the students’ satisfaction in respect to the service of a big real estate agency, operating in the houses‐to‐let market, in Bologna (Italy) for 2002.

Keywords

Citation

Giorgio Lovaglio, P. (2004), "The customer satisfaction in a reduced rank regression framework", The TQM Magazine, Vol. 16 No. 1, pp. 33-44. https://doi.org/10.1108/09544780410511461

Publisher

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Emerald Group Publishing Limited

Copyright © 2004, Emerald Group Publishing Limited

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