DTRlearn2 - Statistical Learning Methods for Optimizing Dynamic Treatment
Regimes
We provide a comprehensive software to estimate general
K-stage DTRs from SMARTs with Q-learning and a variety of
outcome-weighted learning methods. Penalizations are allowed
for variable selection and model regularization. With the
outcome-weighted learning scheme, different loss functions -
SVM hinge loss, SVM ramp loss, binomial deviance loss, and L2
loss - are adopted to solve the weighted classification problem
at each stage; augmentation in the outcomes is allowed to
improve efficiency. The estimated DTR can be easily applied to
a new sample for individualized treatment recommendations or
DTR evaluation.