Targeted Machine Learning for Average Causal Effect Estimation Using the
Front-Door Functional
- URL: http://arxiv.org/abs/2312.10234v1
- Date: Fri, 15 Dec 2023 22:04:53 GMT
- Title: Targeted Machine Learning for Average Causal Effect Estimation Using the
Front-Door Functional
- Authors: Anna Guo, David Benkeser, Razieh Nabi
- Abstract summary: evaluating the average causal effect (ACE) of a treatment on an outcome often involves overcoming the challenges posed by confounding factors in observational studies.
Here, we introduce novel estimation strategies for the front-door criterion based on the targeted minimum loss-based estimation theory.
We demonstrate the applicability of these estimators to analyze the effect of early stage academic performance on future yearly income.
- Score: 3.0232957374216953
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Evaluating the average causal effect (ACE) of a treatment on an outcome often
involves overcoming the challenges posed by confounding factors in
observational studies. A traditional approach uses the back-door criterion,
seeking adjustment sets to block confounding paths between treatment and
outcome. However, this method struggles with unmeasured confounders. As an
alternative, the front-door criterion offers a solution, even in the presence
of unmeasured confounders between treatment and outcome. This method relies on
identifying mediators that are not directly affected by these confounders and
that completely mediate the treatment's effect. Here, we introduce novel
estimation strategies for the front-door criterion based on the targeted
minimum loss-based estimation theory. Our estimators work across diverse
scenarios, handling binary, continuous, and multivariate mediators. They
leverage data-adaptive machine learning algorithms, minimizing assumptions and
ensuring key statistical properties like asymptotic linearity,
double-robustness, efficiency, and valid estimates within the target parameter
space. We establish conditions under which the nuisance functional estimations
ensure the root n-consistency of ACE estimators. Our numerical experiments show
the favorable finite sample performance of the proposed estimators. We
demonstrate the applicability of these estimators to analyze the effect of
early stage academic performance on future yearly income using data from the
Finnish Social Science Data Archive.
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