GLMcat - Generalized Linear Models for Categorical Responses
In statistical modeling, there is a wide variety of
regression models for categorical dependent variables (nominal
or ordinal data); yet, there is no software embracing all these
models together in a uniform and generalized format. Following
the methodology proposed by Peyhardi, Trottier, and Guédon
(2015) <doi:10.1093/biomet/asv042>, we introduce 'GLMcat', an R
package to estimate generalized linear models implemented under
the unified specification (r, F, Z). Where r represents the
ratio of probabilities (reference, cumulative, adjacent, or
sequential), F the cumulative cdf function for the linkage, and
Z, the design matrix.