MELGEMFeb 9, 2022

Validating Causal Inference Methods

arXiv:2202.04208v537 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge for applied researchers in evaluating causal inference methods on data similar to their own, though it is incremental as it builds on existing validation approaches with a new generative technique.

The paper tackles the problem of validating causal inference methods by introducing Credence, a deep generative model-based framework that generates synthetic data anchored to the observed empirical distribution, allowing users to specify ground truth for causal effects and confounding bias; it demonstrates accurate assessment of method performance in simulations and real-world applications.

The fundamental challenge of drawing causal inference is that counterfactual outcomes are not fully observed for any unit. Furthermore, in observational studies, treatment assignment is likely to be confounded. Many statistical methods have emerged for causal inference under unconfoundedness conditions given pre-treatment covariates, including propensity score-based methods, prognostic score-based methods, and doubly robust methods. Unfortunately for applied researchers, there is no `one-size-fits-all' causal method that can perform optimally universally. In practice, causal methods are primarily evaluated quantitatively on handcrafted simulated data. Such data-generative procedures can be of limited value because they are typically stylized models of reality. They are simplified for tractability and lack the complexities of real-world data. For applied researchers, it is critical to understand how well a method performs for the data at hand. Our work introduces a deep generative model-based framework, Credence, to validate causal inference methods. The framework's novelty stems from its ability to generate synthetic data anchored at the empirical distribution for the observed sample, and therefore virtually indistinguishable from the latter. The approach allows the user to specify ground truth for the form and magnitude of causal effects and confounding bias as functions of covariates. Thus simulated data sets are used to evaluate the potential performance of various causal estimation methods when applied to data similar to the observed sample. We demonstrate Credence's ability to accurately assess the relative performance of causal estimation techniques in an extensive simulation study and two real-world data applications from Lalonde and Project STAR studies.

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