Multivariate Behavioral Research | 2019

A Latent Block Distance-Association Model for Profile by Profile Cross-Classified Categorical Data

 
 

Abstract


Abstract Distance association models constitute a useful tool for the analysis and graphical representation of cross-classified data in which distances between points inversely describe the association between two categorical variables. When the number of cells is large and the data counts result in sparse tables, the combination of clustering and representation reduces the number of parameters to be estimated and facilitates interpretation. In this article, a latent block distance-association model is proposed to apply block clustering to the outcomes of two categorical variables while the cluster centers are represented in a low dimensional space in terms of a distance-association model. This model is particularly useful for contingency tables in which both the rows and the columns are characterized as profiles of sets of response variables. The parameters are estimated under a Poisson sampling scheme using a generalized EM algorithm. The performance of the model is tested in a Monte Carlo experiment, and an empirical data set is analyzed to illustrate the model.

Volume 55
Pages 329 - 343
DOI 10.1080/00273171.2019.1634995
Language English
Journal Multivariate Behavioral Research

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