High Dimensional Causal Inference with Variational Backdoor Adjustment
- URL: http://arxiv.org/abs/2310.06100v1
- Date: Mon, 9 Oct 2023 19:21:41 GMT
- Title: High Dimensional Causal Inference with Variational Backdoor Adjustment
- Authors: Daniel Israel, Aditya Grover, Guy Van den Broeck
- Abstract summary: We take a generative modeling approach to backdoor adjustment for high dimensional treatments and confounders.
Our method is able to estimate interventional likelihood in a variety of high dimensional settings, including semi-synthetic X-ray medical data.
- Score: 57.31312942774617
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Backdoor adjustment is a technique in causal inference for estimating
interventional quantities from purely observational data. For example, in
medical settings, backdoor adjustment can be used to control for confounding
and estimate the effectiveness of a treatment. However, high dimensional
treatments and confounders pose a series of potential pitfalls: tractability,
identifiability, optimization. In this work, we take a generative modeling
approach to backdoor adjustment for high dimensional treatments and
confounders. We cast backdoor adjustment as an optimization problem in
variational inference without reliance on proxy variables and hidden
confounders. Empirically, our method is able to estimate interventional
likelihood in a variety of high dimensional settings, including semi-synthetic
X-ray medical data. To the best of our knowledge, this is the first application
of backdoor adjustment in which all the relevant variables are high
dimensional.
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