MGLM - Multivariate Response Generalized Linear Models
Provides functions that (1) fit multivariate discrete
distributions, (2) generate random numbers from multivariate
discrete distributions, and (3) run regression and penalized
regression on the multivariate categorical response data.
Implemented models include: multinomial logit model, Dirichlet
multinomial model, generalized Dirichlet multinomial model, and
negative multinomial model. Making the best of the
minorization-maximization (MM) algorithm and Newton-Raphson
method, we derive and implement stable and efficient algorithms
to find the maximum likelihood estimates. On a multi-core
machine, multi-threading is supported.