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Instrumental and Proximal Causal Inference with Gaussian Processes

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Instrumental variable (IV) and proximal causal learning (Proxy) methods are central frameworks for causal inference in the presence of unobserved confounding. Despite substantial methodological advances, existing approaches rarely provide reliable epistemic uncertainty (EU) quantification. We address this gap through a Deconditional Gaussian Process (DGP) framework for uncertainty-aware causal learning. Our formulation recovers popular kernel estimators as the posterior mean, ensuring predictive precision, while the posterior variance yields principled and well-calibrated EU. Moreover, the probabilistic structure enables systematic model selection via marginal log-likelihood optimization. Empirical results demonstrate strong predictive performance alongside informative EU quantification, evaluated via empirical coverage frequencies and decision-aware accuracy rejection curves. Together, our approach provides a unified, practical solution for causal inference under unobserved confounding with reliable uncertainty.

Yuqi Zhang, Krikamol Muandet, Dino Sejdinovic, Edwin Fong, Siu Lun Chau• 2026

Related benchmarks

TaskDatasetResultRank
Proximal Causal InferenceDemand Airline demand simulation
MSE12.2
15
Proximal Causal InferenceSynthetic
MSE0.319
15
Instrumental Variable Estimationsine n=200
MSE0.142
8
Instrumental Variable Estimationlog n=1000
MSE0.045
4
Instrumental Variable Estimationlinear (n=1000)
MSE0.057
4
Instrumental Variable Estimationdemand n=200
Normalized MSE0.07
4
Instrumental Variable Estimationdemand n=500
Normalized MSE0.053
4
Instrumental Variable Estimationdemand n=1000
Normalized MSE0.028
4
Uncertainty Quantificationsine IV design
AUC86.7
4
Uncertainty Quantificationlog IV design
AUC0.904
4
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