CRAN/E | JQL

JQL

Jump Q-Learning for Individualized Interval-Valued Dose Rule

Installation

About

We provide tools to estimate the individualized interval-valued dose rule (I2DR) that maximizes the expected beneficial clinical outcome for each individual and returns an optimal interval-valued dose, by using the jump Q-learning (JQL) method. The jump Q-learning method directly models the conditional mean of the response given the dose level and the baseline covariates via jump penalized least squares regression under the framework of Q learning. We develop a searching algorithm by dynamic programming in order to find the optimal I2DR with the time complexity O(n2) and spatial complexity O(n). To alleviate the effects of misspecification of the Q-function, a residual jump Q-learning is further proposed to estimate the optimal I2DR. The outcome of interest includes the best partition of the entire dosage of interest, the regression coefficients of each partition, and the value function under the estimated I2DR as well as the Wald-type confidence interval of value function constructed through the Bootstrap.

Key Metrics

Version 3.6.9
Published 2019-11-15 1628 days ago
Needs compilation? no
License LGPL-3
CRAN checks JQL results

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Maintainer

Maintainer

Hengrui Cai

hcai5@ncsu.edu

Authors

Hengrui Cai
Chengchun shi
Rui Song
Wenbin Lu

Material

Reference manual
Package source

macOS

r-release

arm64

r-oldrel

arm64

r-release

x86_64

r-oldrel

x86_64

Windows

r-devel

x86_64

r-release

x86_64

r-oldrel

x86_64

Old Sources

JQL archive

Depends

caret
pdist
stats
randomForest