Diffusion Causal Models for Counterfactual Estimation
- URL: http://arxiv.org/abs/2202.10166v1
- Date: Mon, 21 Feb 2022 12:23:01 GMT
- Title: Diffusion Causal Models for Counterfactual Estimation
- Authors: Pedro Sanchez and Sotirios A. Tsaftaris
- Abstract summary: We consider the task of counterfactual estimation from observational imaging data given a known causal structure.
We propose Diff-SCM, a deep structural causal model that builds on recent advances of generative energy-based models.
We find that Diff-SCM produces more realistic and minimal counterfactuals than baselines on MNIST data and can also be applied to ImageNet data.
- Score: 18.438307666925425
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We consider the task of counterfactual estimation from observational imaging
data given a known causal structure. In particular, quantifying the causal
effect of interventions for high-dimensional data with neural networks remains
an open challenge. Herein we propose Diff-SCM, a deep structural causal model
that builds on recent advances of generative energy-based models. In our
setting, inference is performed by iteratively sampling gradients of the
marginal and conditional distributions entailed by the causal model.
Counterfactual estimation is achieved by firstly inferring latent variables
with deterministic forward diffusion, then intervening on a reverse diffusion
process using the gradients of an anti-causal predictor w.r.t the input.
Furthermore, we propose a metric for evaluating the generated counterfactuals.
We find that Diff-SCM produces more realistic and minimal counterfactuals than
baselines on MNIST data and can also be applied to ImageNet data. Code is
available https://github.com/vios-s/Diff-SCM.
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