English

Semi-Supervised Learning for Deep Causal Generative Models

Machine Learning 2024-07-15 v2 Artificial Intelligence Computer Vision and Pattern Recognition Machine Learning

Abstract

Developing models that are capable of answering questions of the form "How would x change if y had been z?'" is fundamental to advancing medical image analysis. Training causal generative models that address such counterfactual questions, though, currently requires that all relevant variables have been observed and that the corresponding labels are available in the training data. However, clinical data may not have complete records for all patients and state of the art causal generative models are unable to take full advantage of this. We thus develop, for the first time, a semi-supervised deep causal generative model that exploits the causal relationships between variables to maximise the use of all available data. We explore this in the setting where each sample is either fully labelled or fully unlabelled, as well as the more clinically realistic case of having different labels missing for each sample. We leverage techniques from causal inference to infer missing values and subsequently generate realistic counterfactuals, even for samples with incomplete labels.

Keywords

Cite

@article{arxiv.2403.18717,
  title  = {Semi-Supervised Learning for Deep Causal Generative Models},
  author = {Yasin Ibrahim and Hermione Warr and Konstantinos Kamnitsas},
  journal= {arXiv preprint arXiv:2403.18717},
  year   = {2024}
}

Comments

Accepted to MICCAI 2024

R2 v1 2026-06-28T15:35:46.942Z