Article
Marginal models for the association structure of hierarchical binary responses
Registro en:
COSTA, André Gabriel Ferreira Calaça da et al Marginal models for the association structure of hierarchical binary responses. Journal of Applied Statistics, v. 44, n. 10, p. 1827-1838, 2017. doi.org/10.1080/02664763.2016.1238042
0266-4763
10.1080/02664763.2016.1238042
Autor
Costa, André Gabriel Ferreira Calaça da
Colosimo, Enrico Antonio
Vaz, Aline Bruna Martins
Silva, José Luiz Padilha
Amorim, Leila Denise Alves Ferreira
Resumen
CONSELHO NACIONAL DE DESENVOLVIMENTO CIENTÍFICO E TECNOLÓGICO Clustered binary responses are often found in ecological studies. Data analysis may include modeling the marginal probability response. However, when the association is the main scientific focus, modeling the correlation structure between pairs of responses is the key part of the analysis. Second-order generalized estimating equations (GEE) are established in the literature. Some of them are more efficient in computational terms, especially facing large clusters. Alternating logistic regression (ALR) and orthogonalized residual (ORTH) GEE methods are presented and compared in this paper. Simulation results show a slightly superiority of ALR over ORTH. Marginal probabilities and odds ratios are also estimated and compared in a real ecological study involving a three-level hierarchical clustering. ALR and ORTH models are useful for modeling complex association structure with large cluster sizes.