Skip to contents

This dataset contains 88 observations, each generated under a different mechanism treatment heterogeneity with respect to some pre-exposure characteristic, z:

  • (1) Linear interaction

  • (2) No effect then steady increase

  • (3) Plateau

  • (4) Intermediate zone with large effects

Usage

heterogeneous_causal_quartet

Format

A dataframe with 88 rows and 5 variables:

  • dataset: The data generating mechanism

  • exposure: exposure

  • covariate: a pre-exposure factor

  • outcome: outcome

  • .causal_effect: latent true causal effect

References

Gelman, A., Hullman, J., & Kennedy, L. (2023). Causal quartets: Different ways to attain the same average treatment effect. arXiv preprint arXiv:2302.12878.

Hullman J (2023). causalQuartet: Create Causal Quartets for Interrogating Average Treatment Effects. R package version 0.0.0.9000.