Encoding Causal Macrovariables
Abstract
In many scientific disciplines, coarse-grained causal models are used to explain and predict the dynamics of more fine-grained systems. Naturally, such models require appropriate macrovariables. Automated procedures to detect suitable variables would be useful to leverage increasingly available high-dimensional observational datasets. This work introduces a novel algorithmic approach that is inspired by a new characterisation of causal macrovariables as information bottlenecks between microstates. Its general form can be adapted to address individual needs of different scientific goals. After a further transformation step, the causal relationships between learned variables can be investigated through additive noise models. Experiments on both simulated data and on a real climate dataset are reported. In a synthetic dataset, the algorithm robustly detects the ground-truth variables and correctly infers the causal relationships between them. In a real climate dataset, the algorithm robustly detects two variables that correspond to the two known variations of the El Nino phenomenon.
Cite
@article{arxiv.2111.14724,
title = {Encoding Causal Macrovariables},
author = {Benedikt Höltgen},
journal= {arXiv preprint arXiv:2111.14724},
year = {2021}
}
Comments
Presented at NeurIPS 2021 Workshop "Causal Inference & Machine Learning: Why now?"