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Observational-Interventional Priors for Dose-Response Learning

Machine Learning 2016-05-06 v1

Abstract

Controlled interventions provide the most direct source of information for learning causal effects. In particular, a dose-response curve can be learned by varying the treatment level and observing the corresponding outcomes. However, interventions can be expensive and time-consuming. Observational data, where the treatment is not controlled by a known mechanism, is sometimes available. Under some strong assumptions, observational data allows for the estimation of dose-response curves. Estimating such curves nonparametrically is hard: sample sizes for controlled interventions may be small, while in the observational case a large number of measured confounders may need to be marginalized. In this paper, we introduce a hierarchical Gaussian process prior that constructs a distribution over the dose-response curve by learning from observational data, and reshapes the distribution with a nonparametric affine transform learned from controlled interventions. This function composition from different sources is shown to speed-up learning, which we demonstrate with a thorough sensitivity analysis and an application to modeling the effect of therapy on cognitive skills of premature infants.

Keywords

Cite

@article{arxiv.1605.01573,
  title  = {Observational-Interventional Priors for Dose-Response Learning},
  author = {Ricardo Silva},
  journal= {arXiv preprint arXiv:1605.01573},
  year   = {2016}
}
R2 v1 2026-06-22T13:53:53.043Z