Efficient Randomized Experiments Using Foundation Models

journal club
April 2024 Seminar by Devan V. Mehrotra
Published

May 9, 2025

Topic: Efficient Randomized Experiments Using Foundation Models

Datetime: May 9th Friday, 11am-12pm ET.

Presenter: Piersilvio De Bartolomeis from ETH Zurich

Summary: Randomized experiments are the preferred approach for evaluating the effects of interventions, but they are costly and often yield estimates with substantial uncertainty. On the other hand, in silico experiments leveraging foundation models offer a cost-effective alternative that can potentially attain higher statistical precision. However, the benefits of in silico experiments come with a significant risk: statistical inferences are not valid if the models fail to accurately predict experimental responses to interventions. In this paper, we propose a novel approach that integrates the predictions from multiple foundation models with experimental data while preserving valid statistical inference. Our estimator is consistent and asymptotically normal, with asymptotic variance no larger than the standard estimator based on experimental data alone. Importantly, these statistical properties hold even when model predictions are arbitrarily biased. Empirical results across several randomized experiments show that our estimator offers substantial precision gains, equivalent to a reduction of up to 20% in the sample size needed to match the same precision as the standard estimator based on experimental data alone.

Please email Dr. Bingkai Wang at bingkai at umich.edu for the Zoom link.