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Frequentist Consistency of Prior-Data Fitted Networks for Causal Inference

arXiv cs.LG / 3/13/2026

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Key Points

  • PFNs used for causal inference can exhibit prior-induced confounding bias when viewed as Bayesian ATE estimators, preventing frequentist consistency.
  • The paper proposes a one-step posterior correction (OSPC) calibration to restore frequentist consistency and derives a semi-parametric Bernstein-von Mises result for calibrated PFNs.
  • They implement OSPC by tailoring martingale posteriors on top of PFNs to recover the functional nuisance posteriors required by the calibration.
  • In (semi-)synthetic experiments, calibrated PFNs achieve ATE uncertainty that matches frequentist uncertainty asymptotically and remains well calibrated in finite samples compared with other Bayesian ATE estimators.

Abstract

Foundation models based on prior-data fitted networks (PFNs) have shown strong empirical performance in causal inference by framing the task as an in-context learning problem.However, it is unclear whether PFN-based causal estimators provide uncertainty quantification that is consistent with classical frequentist estimators. In this work, we address this gap by analyzing the frequentist consistency of PFN-based estimators for the average treatment effect (ATE). (1) We show that existing PFNs, when interpreted as Bayesian ATE estimators, can exhibit prior-induced confounding bias: the prior is not asymptotically overwritten by data, which, in turn, prevents frequentist consistency. (2) As a remedy, we suggest employing a calibration procedure based on a one-step posterior correction (OSPC). We show that the OSPC helps to restore frequentist consistency and can yield a semi-parametric Bernstein-von Mises theorem for calibrated PFNs (i.e., both the calibrated PFN-based estimators and the classical semi-parametric efficient estimators converge in distribution with growing data size). (3) Finally, we implement OSPC through tailoring martingale posteriors on top of the PFNs. In this way, we are able to recover functional nuisance posteriors from PFNs, required by the OSPC. In multiple (semi-)synthetic experiments, PFNs calibrated with our martingale posterior OSPC produce ATE uncertainty that (i) asymptotically matches frequentist uncertainty and (ii) is well calibrated in finite samples in comparison to other Bayesian ATE estimators.