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2013 | 14 | 1 | 171-182

Article title

Model of Latent Profile Factor Analysis for Ordered Categorical Data

Authors

Content

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Languages of publication

EN

Abstracts

EN
In the literature factor analysis is admittedly a well-known and effective multivariate method in the reduction of extensive and broad data, e.g., in the analysis of too many variables. It is also known for the process of unidimensional or multidimensional scale/s construction. Typically, in many studies (especially those pertaining to market research area) a common factor analysis solution is used (based on continuous data). However, there are rarely ever undertaken studies pertaining to latent variable models where other type of data is used based on discrete variables. One of these models might be called Latent Profile Factor Analysis - LPFA. In this article author’s main objective is to propose and discuss its (LPFA) main assumptions. In order to prove the model’s functionality in practice of market research, a brief example of LPFA model for ordered categorical data (based on one-factorial solution) in reference to hedonic consumption data is given at the end of the paper.

Year

Volume

14

Issue

1

Pages

171-182

Physical description

Contributors

author
  • Poznan University of Economics

References

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Document Type

Publication order reference

Identifiers

YADDA identifier

bwmeta1.element.desklight-d34a00e9-d294-486e-a38c-147dfd3c7202
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