FITTING A MULTILEVEL LINEAR MODEL TO A SAMPLE OF CONTINGENCY TABLES USING GENERALIZED LEAST SQUARES

Authors

  • Minerva Montero Instituto de Cibernética, Matemática y Física, La Habana
  • Ernestina Castell Universidad de La Habana. La Habana
  • Mario Miguel Ojeda Universidad Veracruzana. Veracruz

Keywords:

Logistic regression, Categorical data, Generalized Least Squares, Hierarchical linear models

Abstract

In this work we propose a new approach for estimating multilevel models in contingency tables. This approach is based
mainly on the use of the linear model as fundamental base to elaborate inference methods and the application of
algorithms of iterative generalized least squares for the estimation of the fixed and random parameters. As illustration it is
considered a logistic regression model in two levels and the proposed procedure is applied to a real problem from the
literature. Finally, we carried out a brief simulation study to examine the behaviour of the estimates

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Published

2023-06-09

How to Cite

Montero, M., Castell, E., & Miguel Ojeda, M. (2023). FITTING A MULTILEVEL LINEAR MODEL TO A SAMPLE OF CONTINGENCY TABLES USING GENERALIZED LEAST SQUARES. Investigación Operacional, 28(3). Retrieved from https://revistas.uh.cu/invoperacional/article/view/6358

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