Affiliation:
1. Department of Computer Science Utah Valley University Orem Utah 84058 USA
2. Department of Mathematics University of Utah Salt Lake City Utah 84112 USA
Abstract
For sensitivity analysis with stochastic counterfactuals, we introduce a methodology to characterize uncertainty in causal inference from natural experiments. Our sensitivity parameters are standardized measures of variation in propensity and prognosis probabilities, and one minus their geometric mean is an intuitive measure of randomness in the data generating process. Within our latent propensity‐prognosis model, we show how to compute, from contingency table data, a threshold, , of sufficient randomness for causal inference. If the actual randomness of the data generating process is greater than this threshold, then causal inference is warranted. We demonstrate our methodology with two example applications.
Subject
Statistics, Probability and Uncertainty,Statistics and Probability