Combining observational datasets from multiple environments to detect hidden confounding

05/27/2022
by   Rickard K. A. Karlsson, et al.
0

A common assumption in causal inference from observational data is the assumption of no hidden confounding. Yet it is, in general, impossible to verify the presence of hidden confounding factors from a single dataset. However, under the assumption of independent causal mechanisms underlying the data generative process, we demonstrate a way to detect unobserved confounders when having multiple observational datasets coming from different environments. We present a theory for testable conditional independencies that are only violated during hidden confounding and examine cases where we break its assumptions: degenerate dependent mechanisms, and faithfulness violations. Additionally, we propose a procedure to test these independencies and study its empirical finite-sample behavior using simulation studies.

READ FULL TEXT

page 6

page 13

page 18

research
10/27/2018

Removing Hidden Confounding by Experimental Grounding

Observational data is increasingly used as a means for making individual...
research
11/03/2022

A Consistent Estimator for Confounding Strength

Regression on observational data can fail to capture a causal relationsh...
research
05/02/2021

Synthesized Difference in Differences

Randomized clinical trials (RCTs) eliminate confounding but impose stric...
research
01/17/2023

Causal Falsification of Digital Twins

Digital twins hold substantial promise in many applications, but rigorou...
research
02/12/2020

Detect and Correct Bias in Multi-Site Neuroimaging Datasets

The desire to train complex machine learning algorithms and to increase ...
research
04/08/2020

Doubly Debiased Lasso: High-Dimensional Inference under Hidden Confounding and Measurement Errors

Inferring causal relationships or related associations from observationa...
research
07/21/2020

Generalization and Invariances in the Presence of Unobserved Confounding

The ability to extrapolate, or generalize, from observed to new related ...

Please sign up or login with your details

Forgot password? Click here to reset