Abstracting Causal Models

Publication date

2019-07-17

Authors

Beckers, S.L.ISNI 0000000506321523
Halpern, Joseph Y.

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

We consider a sequence of successively more restrictive defi- nitions of abstraction for causal models, starting with a notion introduced by Rubenstein et al. (2017) called exact transformation that applies to probabilistic causal models, moving to a notion of uniform transformation that applies to deterministic causal models and does not allow differences to be hidden by the “right” choice of distribution, and then to abstraction, where the interventions of interest are determined by the map from low-level states to high-level states, and strong abstraction, which takes more seriously all potential interventions in a model, not just the allowed interventions. We show that procedures for combining micro-variables into macro-variables are instances of our notion of strong abstraction, as are all the examples considered by Rubenstein et al.

Keywords

Taverne

Citation

Beckers, S L & Halpern, J Y 2019, Abstracting Causal Models. in Proceedings of the 33rd AAAI Conference on Artificial Intelligence. pp. 2678-2685. https://doi.org/10.1609/aaai.v33i01.33012678