English

Causal Abstraction Inference under Lossy Representations

Machine Learning 2025-09-29 v1

Abstract

The study of causal abstractions bridges two integral components of human intelligence: the ability to determine cause and effect, and the ability to interpret complex patterns into abstract concepts. Formally, causal abstraction frameworks define connections between complicated low-level causal models and simple high-level ones. One major limitation of most existing definitions is that they are not well-defined when considering lossy abstraction functions in which multiple low-level interventions can have different effects while mapping to the same high-level intervention (an assumption called the abstract invariance condition). In this paper, we introduce a new type of abstractions called projected abstractions that generalize existing definitions to accommodate lossy representations. We show how to construct a projected abstraction from the low-level model and how it translates equivalent observational, interventional, and counterfactual causal queries from low to high-level. Given that the true model is rarely available in practice we prove a new graphical criteria for identifying and estimating high-level causal queries from limited low-level data. Finally, we experimentally show the effectiveness of projected abstraction models in high-dimensional image settings.

Keywords

Cite

@article{arxiv.2509.21607,
  title  = {Causal Abstraction Inference under Lossy Representations},
  author = {Kevin Xia and Elias Bareinboim},
  journal= {arXiv preprint arXiv:2509.21607},
  year   = {2025}
}

Comments

35 pages, 8 figures, published at ICML 2025

R2 v1 2026-07-01T05:57:15.444Z