CRAN/E | tmle

tmle

Targeted Maximum Likelihood Estimation

Installation

About

Targeted maximum likelihood estimation of point treatment effects (Targeted Maximum Likelihood Learning, The International Journal of Biostatistics, 2(1), 2006. This version automatically estimates the additive treatment effect among the treated (ATT) and among the controls (ATC). The tmle() function calculates the adjusted marginal difference in mean outcome associated with a binary point treatment, for continuous or binary outcomes. Relative risk and odds ratio estimates are also reported for binary outcomes. Missingness in the outcome is allowed, but not in treatment assignment or baseline covariate values. The population mean is calculated when there is missingness, and no variation in the treatment assignment. The tmleMSM() function estimates the parameters of a marginal structural model for a binary point treatment effect. Effect estimation stratified by a binary mediating variable is also available. An ID argument can be used to identify repeated measures. Default settings call 'SuperLearner' to estimate the Q and g portions of the likelihood, unless values or a user-supplied regression function are passed in as arguments.

Citation tmle citation info
CRAN.R-project.org/package=tmle
Copyright Copyright 2012. The Regents of the University of California (Regents). All Rights Reserved.

Key Metrics

Version 2.0.0
Published 2023-08-22 248 days ago
Needs compilation? no
License BSD_3_clause
License File
License GPL-2
CRAN checks tmle results

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Maintainer

Maintainer

Susan Gruber

sgruber@cal.berkeley.edu

Authors

Susan Gruber

aut / cre

Mark van der Laan

aut

Chris Kennedy

ctr

Material

NEWS
Reference manual
Package source

In Views

CausalInference

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

tmle archive

Depends

glmnet
SuperLearner ≥ 2.0

Suggests

dbarts ≥ 0.9-18
gam ≥ 1.15
ROCR ≥ 1.0-7
WeightedROC

Reverse Depends

ctmle

Reverse Imports

CIMTx

Reverse Suggests

AIPW
bartCause
ltmle