Distance-based logistic model for cross-classified categorical data
Metadatos
Afficher la notice complèteAuteur
Vera Vera, José FernandoEditorial
John Wiley & Sons
Date
2022-01-25Referencia bibliográfica
Vera, J.F. (2022), Distance-based logistic model for cross-classified categorical data. Br J Math Stat Psychol. [https://doi.org/10.1111/bmsp.12264]
Patrocinador
(Ministry of Science and Innovation - State Research Agency/10.13039/501100011033/Spain) RTI2018-099723-B-I00; Universidad de Granada/CBUARésumé
Logistic regression models are a powerful research tool for the analysis of cross-classified
data in which a categorical response variable is involved. In a logistic model, the effect of a
covariate refers to odds, and the simple relationship between the coefficients and the
odds ratio often makes these the parameters of interest due to their easy interpretation.
In this article we present a distance-based logistic model that allows a simple graphical
interpretation of the association coefficients using the odds ratio in a contingency table.
Two configurations are estimated, one for the rows and one for the columns, as the
categories of a polytomous predictor and a nominal response variable respectively, such
that the local odds ratio and the distances between the predictor and response categories
are inversely related. The associations in terms of the odds ratios, or the ratios of the odds
to their geometric means, are interpreted through distances for the most common coding
schemes of the predictor variable, and the relationship between the distances related to
different codings is investigated in its full dimension. The performance of the estimation
procedure is analysed with a Monte Carlo experiment. The interpretation of the model
and its performance, as well as its comparison with a two-step procedure involving first a
logistic regression and then unfolding, is illustrated using real data sets.