Causal Mediation Analysis for Stochastic Interventions
Authors: Nima Hejazi and Iván Díaz
medshift
?
The medshift
R package is designed to provide facilities for estimating a parameter that arises in a decomposition of the population intervention causal effect into the (in)direct effects under stochastic interventions in the setting of mediation analysis. medshift
is designed as an implementation to accompany the methodology described in Dı́az and Hejazi (2020). Implemented estimators include the classical substitution (G-computation) estimator, an inverse probability weighted (IPW) estimator, an efficient one-step estimator using cross-fitting (Pfanzagl and Wefelmeyer 1985; Zheng and van der Laan 2011; Chernozhukov et al. 2018), and a cross-validated targeted minimum loss (TML) estimator (van der Laan and Rose 2011; Zheng and van der Laan 2011). medshift
integrates with the sl3
R package (Coyle et al. 2022) to allow constructed estimators to leverage machine learning for nuisance estimation.
Install the most recent version from the master
branch on GitHub via remotes
:
remotes::install_github("nhejazi/medshift")
To illustrate how medshift
may be used to estimate the effect of applying a stochastic intervention to the treatment (A
) while keeping the mediator(s) (Z
) fixed, consider the following example:
library(data.table)
library(medshift)
# produces a simple data set based on ca causal model with mediation
make_simple_mediation_data <- function(n_obs = 1000) {
# baseline covariate -- simple, binary
W <- rbinom(n_obs, 1, prob = 0.50)
# create treatment based on baseline W
A <- as.numeric(rbinom(n_obs, 1, prob = W / 4 + 0.1))
# single mediator to affect the outcome
z1_prob <- 1 - plogis((A^2 + W) / (A + W^3 + 0.5))
Z <- rbinom(n_obs, 1, prob = z1_prob)
# create outcome as a linear function of A, W + white noise
Y <- Z + A - 0.1 * W + rnorm(n_obs, mean = 0, sd = 0.25)
# full data structure
data <- as.data.table(cbind(Y, Z, A, W))
setnames(data, c("Y", "Z", "A", "W"))
return(data)
}
# set seed and simulate example data
set.seed(75681)
example_data <- make_simple_mediation_data()
# compute one-step estimate for an incremental propensity score intervention
# that triples (delta = 3) the individual-specific odds of receiving treatment
os_medshift <- medshift(W = example_data$W, A = example_data$A,
Z = example_data$Z, Y = example_data$Y,
delta = 3, estimator = "onestep",
estimator_args = list(cv_folds = 3))
summary(os_medshift)
#> lwr_ci param_est upr_ci param_var eif_mean estimator
#> 0.7401 0.788136 0.836172 0.000601 1.64686e-17 onestep
For details on how to use data adaptive regression (machine learning) techniques in the estimation of nuisance parameters, consider consulting the vignette that accompanies this package.
Contributions are very welcome. Interested contributors should consult our contribution guidelines prior to submitting a pull request.
After using the medshift
R package, please cite the following:
@article{diaz2020causal,
title={Causal mediation analysis for stochastic interventions},
author={D{\'\i}az, Iv{\'a}n and Hejazi, Nima S},
year={2020},
url = {https://doi.org/10.1111/rssb.12362},
doi = {10.1111/rssb.12362},
journal={Journal of the Royal Statistical Society: Series B
(Statistical Methodology)},
volume={},
number={},
pages={},
publisher={Wiley Online Library}
}
@manual{hejazi2020medshift,
author = {Hejazi, Nima S and D{\'\i}az, Iv{\'a}n},
title = {{medshift}: Causal mediation analysis for stochastic
interventions},
year = {2020},
url = {https://github.com/nhejazi/medshift},
note = {R package version 0.1.4}
}
© 2018-2022 Nima S. Hejazi
The contents of this repository are distributed under the MIT license. See below for details:
MIT License
Copyright (c) 2018-2022 Nima S. Hejazi
Permission is hereby granted, free of charge, to any person obtaining a copy
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OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
SOFTWARE.
Chernozhukov, Victor, Denis Chetverikov, Mert Demirer, Esther Duflo, Christian Hansen, Whitney Newey, and James Robins. 2018. “Double/Debiased Machine Learning for Treatment and Structural Parameters.” The Econometrics Journal 21 (1). https://doi.org/10.1111/ectj.12097.
Coyle, Jeremy R, Nima S Hejazi, Ivana Malenica, Rachael V Phillips, and Oleg Sofrygin. 2022. sl3: Modern Pipelines for Machine Learning and Super Learning. https://github.com/tlverse/sl3. https://doi.org/10.5281/zenodo.1342293.
Dı́az, Iván, and Nima S Hejazi. 2020. “Causal Mediation Analysis for Stochastic Interventions.” Journal of the Royal Statistical Society: Series B (Statistical Methodology). https://doi.org/10.1111/rssb.12362.
Pfanzagl, J, and W Wefelmeyer. 1985. “Contributions to a General Asymptotic Statistical Theory.” Statistics & Risk Modeling 3 (3-4): 379–88.
van der Laan, Mark J, and Sherri Rose. 2011. Targeted Learning: Causal Inference for Observational and Experimental Data. Springer Science & Business Media.
Zheng, Wenjing, and Mark J van der Laan. 2011. “Cross-Validated Targeted Minimum-Loss-Based Estimation.” In Targeted Learning, 459–74. Springer.