JMLR

Hierarchical Causal Models

Authors
Eli N. Weinstein David M. Blei
Research Topics
Causal Inference
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Mar 03, 2026
Abstract

Causal questions often arise in settings where data are hierarchical: subunits are nested within units. Consider students in schools, cells in patients, or cities in states. In these settings, unit-level variables (e.g., a school's budget) may affect subunit-level outcomes (e.g., student test scores), and subunit-level characteristics may aggregate to influence unit-level outcomes. In this paper, we show how to analyze hierarchical data for causal inference. We introduce hierarchical causal models, which extend structural causal models and graphical models by incorporating inner plates to represent nested data structures. We develop a graphical identification technique for these models that generalizes do-calculus. We show that hierarchical data can enable causal identification even when it would be impossible with non-hierarchical data--for example, when only unit-level summaries are available. We develop estimation strategies, including using hierarchical Bayesian models. We illustrate our results in simulation and through a reanalysis of the classic "eight schools" study.

Author Details
Eli N. Weinstein
Author
David M. Blei
Author
Research Topics & Keywords
Causal Inference
Research Area
Citation Information
APA Format
Eli N. Weinstein & David M. Blei . Hierarchical Causal Models. Journal of Machine Learning Research .
BibTeX Format
@article{paper977,
  title = { Hierarchical Causal Models },
  author = { Eli N. Weinstein and David M. Blei },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v27/25-0899.html }
}