RRMLRfMC - Reduced-Rank Multinomial Logistic Regression for Markov Chains
Fit the reduced-rank multinomial logistic regression model
for Markov chains developed by Wang, Abner, Fardo, Schmitt,
Jicha, Eldik and Kryscio (2021)<doi:10.1002/sim.8923> in R. It
combines the ideas of multinomial logistic regression in Markov
chains and reduced-rank. It is very useful in a study where
multi-states model is assumed and each transition among the
states is controlled by a series of covariates. The key
advantage is to reduce the number of parameters to be
estimated. The final coefficients for all the covariates and
the p-values for the interested covariates will be reported.
The p-values for the whole coefficient matrix can be calculated
by two bootstrap methods.