OrdFacReg: Least squares, logistic, and Cox-regression with ordered
predictors
In biomedical studies, researchers are often interested in
assessing the association between one or more ordinal
explanatory variables and an outcome variable, at the same time
adjusting for covariates of any type. The outcome variable may
be continuous, binary, or represent censored survival times. In
the absence of a precise knowledge of the response function,
using monotonicity constraints on the ordinal variables
improves efficiency in estimating parameters, especially when
sample sizes are small. This package implements an active set
algorithm that efficiently computes such estimators.
Downloads: