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multiPIM (version 1.4-3)

Variable Importance Analysis with Population Intervention Models

Description

Performs variable importance analysis using a causal inference approach. This is done by fitting Population Intervention Models. The default is to use a Targeted Maximum Likelihood Estimator (TMLE). The other available estimators are Inverse Probability of Censoring Weighted (IPCW), Double-Robust IPCW (DR-IPCW), and Graphical Computation (G-COMP) estimators. Inference can be obtained from the influence curve (plug-in) or by bootstrapping.

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Version

Install

install.packages('multiPIM')

Monthly Downloads

19

Version

1.4-3

License

GPL (>= 2)

Maintainer

Stephan Ritter

Last Published

February 25th, 2015

Functions in multiPIM (1.4-3)

summary.multiPIM

Summary methods for class multiPIM
Candidates

Super learner candidates (regression methods) available for use with the multiPIM and multiPIMboot functions
multiPIMboot

Bootstrap the multiPIM Function
multiPIM

Estimate Variable Importances for Multiple Exposures and Outcomes
wcgs

Subset of Data from Western Collaborative Group Study
schisto

Schistosomiasis Data Set