Learning Causal Response Representations through Direct Effect Analysis
Abstract
We propose a novel approach for learning causal response representations. Our method aims to extract directions in which a multidimensional outcome is most directly caused by a treatment variable. By bridging conditional independence testing with causal representation learning, we formulate an optimisation problem that maximises the evidence against conditional independence between the treatment and outcome, given a conditioning set. This formulation employs flexible regression models tailored to specific applications, creating a versatile framework. The problem is addressed through a generalised eigenvalue decomposition. We show that, under mild assumptions, the distribution of the largest eigenvalue can be bounded by a known -distribution, enabling testable conditional independence. We also provide theoretical guarantees for the optimality of the learned representation in terms of signal-to-noise ratio and Fisher information maximisation. Finally, we demonstrate the empirical effectiveness of our approach in simulation and real-world experiments. Our results underscore the utility of this framework in uncovering direct causal effects within complex, multivariate settings.
Cite
@article{arxiv.2503.04358,
title = {Learning Causal Response Representations through Direct Effect Analysis},
author = {Homer Durand and Gherardo Varando and Gustau Camps-Valls},
journal= {arXiv preprint arXiv:2503.04358},
year = {2025}
}
Comments
32 pages, 15 figures, stat.ML