Constructing Confidence Intervals for Average Treatment Effects from Multiple Datasets
Constructing confidence intervals (CIs) for the average treatment effect (ATE) from patient records is crucial to assess the effectiveness and safety of drugs. However, patient records typically come from different hospitals, thus raising the question of how multiple observational datasets can be ef...
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Zusammenfassung: | Constructing confidence intervals (CIs) for the average treatment effect
(ATE) from patient records is crucial to assess the effectiveness and safety of
drugs. However, patient records typically come from different hospitals, thus
raising the question of how multiple observational datasets can be effectively
combined for this purpose. In our paper, we propose a new method that estimates
the ATE from multiple observational datasets and provides valid CIs. Our method
makes little assumptions about the observational datasets and is thus widely
applicable in medical practice. The key idea of our method is that we leverage
prediction-powered inferences and thereby essentially `shrink' the CIs so that
we offer more precise uncertainty quantification as compared to na\"ive
approaches. We further prove the unbiasedness of our method and the validity of
our CIs. We confirm our theoretical results through various numerical
experiments. Finally, we provide an extension of our method for constructing
CIs from combinations of experimental and observational datasets. |
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DOI: | 10.48550/arxiv.2412.11511 |