Debiased neural operators for estimating functionals

arXiv cs.LG / 4/22/2026

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Key Points

  • The paper presents DOPE (debiased neural operator), a semiparametric method for estimating scalar target quantities (functionals) derived from trajectories produced by neural operators.
  • It argues that straightforward “plug-in” estimation using neural operators can incur first-order bias, motivating a more principled debiasing approach.
  • DOPE introduces a one-step, Neyman-orthogonal estimator that removes the leading bias by viewing the neural operator as a high-dimensional nuisance mapping between function spaces.
  • The method learns the required weighting via an extension of automatic debiased machine learning to operator-valued nuisance functions using Riesz regression, and is shown to work well in numerical experiments.
  • DOPE is designed to handle both partial and irregular observations and can be used with a wide range of neural-operator architectures.

Abstract

Neural operators are widely used to approximate solution maps of complex physical systems. In many applications, however, the goal is not to recover the full solution trajectory, but to summarize the solution trajectory via a scalar target quantity (e.g., a functional such as time spent in a target range, time above a threshold, accumulated cost, or total energy). In this paper, we introduce DOPE (debiased neural operator): a semiparametric estimator for such target quantities of solution trajectories obtained from neural operators. DOPE is broadly applicable to settings with both partial and irregular observations and can be combined with arbitrary neural operator architectures. We make three main contributions. (1) We show that, in contrast to DOPE, naive plug-in estimation can suffer from first-order bias. (2) To address this, we derive a novel one-step, Neyman-orthogonal estimator that treats the neural operator as a high-dimensional nuisance mapping between function spaces, and removes the leading bias term. For this, DOPE uses a weighting mechanism that simultaneously accounts for irregular observation designs and for how sensitive the target quantity is to perturbations of the underlying trajectory. (3) To learn the weights, we extend automatic debiased machine learning to operator-valued nuisances via Riesz regression. We demonstrate the benefits of DOPE across various numerical experiments.

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