<b>A new approach to simple correspondence analysis with emphasis on the violation of the independence assumption of the levels of categorical variables

  • André Luís Alves Costa Universidade Federal de Lavras
  • Carla Regina Guimarães Brighenti Universidade Federal de São João del Rei
  • Marcelo Angelo Cirillo Universidade Federal de Lavras
Keywords: binomial, residuals, cophenetic, inertia.

Abstract

The main hypothesis of correspondence analysis is given by the independence between the levels of categorical variables. Due to violation of this hypothesis, this study aims to improve the technique of correspondence analysis, providing a new approach for the calculation of the coordinates through the residual incorporation by tables in which categories have different levels of correlation. For this purpose, the simulation was made using Monte Carlo to generate frequencies from the correlated binomial distribution BC (n, π, ρ). It was concluded that in all evaluated scenarios the approach is promising in the sense that the objects were better discriminated against conventional approach. Moreover, the proposed procedure for obtaining the coordinates is likely to be used on real data as shown in the application example.

 

 

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Author Biographies

André Luís Alves Costa, Universidade Federal de Lavras
doutorando em estatística / Universidade de São Paulo
Carla Regina Guimarães Brighenti, Universidade Federal de São João del Rei
Professora associada no departametno de zootecnia, atua na área de pesquisa de análise multivariada e testes sequenciais.
Marcelo Angelo Cirillo, Universidade Federal de Lavras
Auta como pesquisador do CNPq e na pós-graduação do Departamento de Estatística nas áreas de análise multivariada, otimização, modelos generalizados
Published
2018-04-26
How to Cite
Costa, A. L. A., Brighenti, C. R. G., & Cirillo, M. A. (2018). <b&gt;A new approach to simple correspondence analysis with emphasis on the violation of the independence assumption of the levels of categorical variables. Acta Scientiarum. Technology, 40(1), e34953. https://doi.org/10.4025/actascitechnol.v40i1.34953

 

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0.8
2019CiteScore
 
 
36th percentile
Powered by  Scopus