Abstract

Latent class analysis can be viewed as a special case of model–based clustering for multivariate discrete data. It is assumed that each observation comes from one of a number of classes, groups or subpopulations, with its own probability distribution. The overall population thus follows a finite mixture model. When observed, data take the form of categorical responses—as, for example, in public opinion or consumer behavior surveys it is often of interest to identify and characterize clusters of similar objects. In the context of marketing research, one will typically interpret the latent number of mixture components as clusters or segments. In fact, LC analysis provides a powerful new tool to identify important market segments in target marketing. We used the model based clustering approach for grouping and detecting inhomogeneities of Polish opinions on the euro adoption. We analyzed data collected as part of the Polish General Social Survey using the R software.

Highlights

  • “Ten years ago, on 1 January 2002, euro banknotes and coins were introduced in 12 Member States of the European Union

  • The analyses presented below are based on n = 648 adolescents who participated in the Polish General Social Survey (GSS)

  • We analyzed the Polish opinions on the euro adoption

Read more

Summary

Introduction

“Ten years ago, on 1 January 2002, euro banknotes and coins were introduced in 12 Member States of the European Union. The year 2008 was very important for Poland because on 10 September Polish Prime Minister Donald Tusk gave a speech and announced the ruling government’s objective to join the Eurozone in 2012 of the launch of an economic forum in the Polish resort of Krynica-Zdroj. He was aware that the Polish constitution would need to be changed first and Poland would have to join the ERM 2 before the second quarter of 2009, a target date that was still very aggressive. The paper ends with a summary of the main results of the research and a discussion of possible directions for future research

Mixture models
Parameter and standard error estimation
Mixture models with covariates
Model selection
Example
Findings
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call