Probabilistic Modelling is Sufficient for Causal Inference
Machine Learning
2025-12-30 v1 Machine Learning
Methodology
Abstract
Causal inference is a key research area in machine learning, yet confusion reigns over the tools needed to tackle it. There are prevalent claims in the machine learning literature that you need a bespoke causal framework or notation to answer causal questions. In this paper, we want to make it clear that you \emph{can} answer any causal inference question within the realm of probabilistic modelling and inference, without causal-specific tools or notation. Through concrete examples, we demonstrate how causal questions can be tackled by writing down the probability of everything. Lastly, we reinterpret causal tools as emerging from standard probabilistic modelling and inference, elucidating their necessity and utility.
Cite
@article{arxiv.2512.23408,
title = {Probabilistic Modelling is Sufficient for Causal Inference},
author = {Bruno Mlodozeniec and David Krueger and Richard E. Turner},
journal= {arXiv preprint arXiv:2512.23408},
year = {2025}
}