Does Misclassifying Non-confounding Covariates as Confounders Affect the Causal Inference within the Potential Outcomes Framework?
Yonghe Zhao, Qiang Huang, Shuai Fu, Huiyan Sun

TL;DR
This paper investigates how misclassifying non-confounding covariates as confounders impacts causal inference within the Potential Outcomes Framework, providing a graphical analysis and empirical validation.
Contribution
It introduces a unified graphical framework for CIMs-POF and analyzes the effects of including various non-confounding covariates on causal inference performance.
Findings
Optimal covariate set for confounding bias removal is only confounders.
Adjustment variables improve counterfactual inference accuracy.
Experimental results validate theoretical insights.
Abstract
The Potential Outcome Framework (POF) plays a prominent role in the field of causal inference. Most causal inference models based on the POF (CIMs-POF) are designed for eliminating confounding bias and default to an underlying assumption of Confounding Covariates. This assumption posits that the covariates consist solely of confounders. However, the assumption of Confounding Covariates is challenging to maintain in practice, particularly when dealing with high-dimensional covariates. While certain methods have been proposed to differentiate the distinct components of covariates prior to conducting causal inference, the consequences of treating non-confounding covariates as confounders remain unclear. This ambiguity poses a potential risk when conducting causal inference in practical scenarios. In this paper, we present a unified graphical framework for the CIMs-POF, which greatly…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Bayesian Modeling and Causal Inference
