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DTRlearn (version 1.3)

Learning Algorithms for Dynamic Treatment Regimes

Description

Dynamic treatment regimens (DTRs) are sequential decision rules tailored at each stage by time-varying subject-specific features and intermediate outcomes observed in previous stages. This package implements three methods: O-learning (Zhao et. al. 2012,2014), Q-learning (Murphy et. al. 2007; Zhao et.al. 2009) and P-learning (Liu et. al. 2014, 2015) to estimate the optimal DTRs.

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Version

Install

install.packages('DTRlearn')

Monthly Downloads

50

Version

1.3

License

GPL-2

Maintainer

Last Published

April 5th, 2018

Functions in DTRlearn (1.3)

plot.linearcl

Plot coefficients for SVM with linear kernel
Qlearning_Single

Single Stage Q learning
DTRlearn-package

Dynamic Treatment Regimens Learning
Plearning

Plearning
make_classification

Data Simulation for single stage
Olearning_Single

Improved single stage O-learning with cross validation
make_2classification

Data Simulation for 2 stages
plot.qlearn

Plot the linear coefficients of interaction
Qlearning

Q-learning
predict.rbfcl

Predict
Olearning

Multiple stage Improved Olearning
wsvm

weighted SVM
predict.linearcl

Predict
predict.qlearn

Predict optimal treatment by Qlearning