# On the probability of a causal inference is robust for internal validity

**Authors:** Tenglong Li, Kenneth A. Frank

arXiv: 1906.08726 · 2019-06-21

## TL;DR

This paper introduces the Probability of a Causal Inference being Robust (PIV), a new index to assess the internal validity of causal claims in observational studies by considering both observed data and unobserved counterfactuals.

## Contribution

It formalizes the PIV as a robustness measure for causal inference, applicable under frequentist and Bayesian frameworks, and provides an eight-step evaluation procedure.

## Key findings

- PIV bounds the probability of re-rejecting the null hypothesis.
- PIV is equivalent to statistical power under certain conditions.
- The method is illustrated with an empirical example.

## Abstract

The internal validity of observational study is often subject to debate. In this study, we define the counterfactuals as the unobserved sample and intend to quantify its relationship with the null hypothesis statistical testing (NHST). We propose the probability of a causal inference is robust for internal validity, i.e., the PIV, as a robustness index of causal inference. Formally, the PIV is the probability of rejecting the null hypothesis again based on both the observed sample and the counterfactuals, provided the same null hypothesis has already been rejected based on the observed sample. Under either frequentist or Bayesian framework, one can bound the PIV of an inference based on his bounded belief about the counterfactuals, which is often needed when the unconfoundedness assumption is dubious. The PIV is equivalent to statistical power when the NHST is thought to be based on both the observed sample and the counterfactuals. We summarize the process of evaluating internal validity with the PIV into an eight-step procedure and illustrate it with an empirical example (i.e., Hong and Raudenbush (2005)).

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Source: https://tomesphere.com/paper/1906.08726