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GDR-learners: Orthogonal Learning of Generative Models for Potential Outcomes

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Various deep generative models have been proposed to estimate potential outcomes distributions from observational data. However, none of them have the favorable theoretical property of general Neyman-orthogonality and, associated with it, quasi-oracle efficiency and double robustness. In this paper, we introduce a general suite of generative Neyman-orthogonal (doubly-robust) learners that estimate the conditional distributions of potential outcomes. Our proposed generative doubly-robust learners (GDR-learners) are flexible and can be instantiated with many state-of-the-art deep generative models. In particular, we develop GDR-learners based on (a) conditional normalizing flows (which we call GDR-CNFs), (b) conditional generative adversarial networks (GDR-CGANs), (c) conditional variational autoencoders (GDR-CVAEs), and (d) conditional diffusion models (GDR-CDMs). Unlike the existing methods, our GDR-learners possess the properties of quasi-oracle efficiency and rate double robustness, and are thus asymptotically optimal. In a series of (semi-)synthetic experiments, we demonstrate that our GDR-learners are very effective and outperform the existing methods in estimating the conditional distributions of potential outcomes.

Valentyn Melnychuk, Stefan Feuerriegel• 2025

Related benchmarks

TaskDatasetResultRank
Conditional distribution estimationIHDP100 a=1 (out-sample)
W2 Score0.021
16
Counterfactual Distribution EstimationColored MNIST a=2
Mean Out-Sample W218.23
16
Counterfactual Distribution EstimationColored MNIST a=3
Mean Out-Sample W218.39
16
Counterfactual Distribution EstimationColored MNIST a=1
Mean Out-Sample W217.94
16
Counterfactual Distribution EstimationColored MNIST a=4
Mean Out-Sample W220.55
16
Counterfactual Distribution EstimationColored MNIST a=0
Mean Out-Sample W220.94
16
Conditional distribution estimationIHDP100 a=0 (out-sample)
W20.047
16
Potential Outcomes Density EstimationACIC 2016--
6
Potential Outcome EstimationHC-MNIST a = 0
CNFs (W2)0.613
4
Potential Outcome EstimationHC-MNIST a = 1
CNFs (W2)0.572
4
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