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Quantifying Consistency and Information Loss for Causal Abstraction Learning

Authors :
Zennaro, Fabio Massimo
Turrini, Paolo
Damoulas, Theodoros
Publication Year :
2023

Abstract

Structural causal models provide a formalism to express causal relations between variables of interest. Models and variables can represent a system at different levels of abstraction, whereby relations may be coarsened and refined according to the need of a modeller. However, switching between different levels of abstraction requires evaluating a trade-off between the consistency and the information loss among different models. In this paper we introduce a family of interventional measures that an agent may use to evaluate such a trade-off. We consider four measures suited for different tasks, analyze their properties, and propose algorithms to evaluate and learn causal abstractions. Finally, we illustrate the flexibility of our setup by empirically showing how different measures and algorithmic choices may lead to different abstractions.<br />Comment: 9 pages, 9 pages appendix, 2 figures, IJCAI 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2305.04357
Document Type :
Working Paper