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DTRlearn2 (version 1.1)

Statistical Learning Methods for Optimizing Dynamic Treatment Regimes

Description

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.

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Version

Install

install.packages('DTRlearn2')

Monthly Downloads

267

Version

1.1

License

GPL-2

Maintainer

Yuan Chen

Last Published

April 22nd, 2020

Functions in DTRlearn2 (1.1)

adhd

A 2-stage SMART data of children with ADHD
predict.ql

Predict from a Fitted "ql" Object
sim_Kstage

Simulate a K-stage Sequential Multiple Assignment Randomized Trial (SMART) data
owl

Integrated Outcome-weighted Learning for Estimating Optimal DTRs
ql

Q-learning for Estimating Optimal DTRs
predict.owl

Predict from a Fitted "owl" Object