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CovSelHigh (version 1.0.0)

Model-Free Covariate Selection in High Dimensions

Description

Model-free selection of covariates in high dimensions under unconfoundedness for situations where the parameter of interest is an average causal effect. This package is based on model-free backward elimination algorithms proposed in de Luna, Waernbaum and Richardson (2011) and VanderWeele and Shpitser (2011) . Confounder selection can be performed via either Markov/Bayesian networks, random forests or LASSO.

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Version

Install

install.packages('CovSelHigh')

Monthly Downloads

4

Version

1.0.0

License

GPL-3

Maintainer

Jenny Häggström

Last Published

April 26th, 2016

Functions in CovSelHigh (1.0.0)

cov.sel.high.lasso

cov.sel.high.lasso
cov.sel.high.rf

cov.sel.high.rf
cov.sel.high

Model-Free Covariate Selection in High Dimensions
cov.sel.high.sim

Simulate Example Data for CovSelHigh
cov.sel.high.sim.res

Summarize Simulation Results for CovSelHigh