English

Generative Intervention Models for Causal Perturbation Modeling

Machine Learning 2025-07-02 v2 Machine Learning

Abstract

We consider the problem of predicting perturbation effects via causal models. In many applications, it is a priori unknown which mechanisms of a system are modified by an external perturbation, even though the features of the perturbation are available. For example, in genomics, some properties of a drug may be known, but not their causal effects on the regulatory pathways of cells. We propose a generative intervention model (GIM) that learns to map these perturbation features to distributions over atomic interventions in a jointly-estimated causal model. Contrary to prior approaches, this enables us to predict the distribution shifts of unseen perturbation features while gaining insights about their mechanistic effects in the underlying data-generating process. On synthetic data and scRNA-seq drug perturbation data, GIMs achieve robust out-of-distribution predictions on par with unstructured approaches, while effectively inferring the underlying perturbation mechanisms, often better than other causal inference methods.

Keywords

Cite

@article{arxiv.2411.14003,
  title  = {Generative Intervention Models for Causal Perturbation Modeling},
  author = {Nora Schneider and Lars Lorch and Niki Kilbertus and Bernhard Schölkopf and Andreas Krause},
  journal= {arXiv preprint arXiv:2411.14003},
  year   = {2025}
}
R2 v1 2026-06-28T20:07:35.996Z