Debiased neural operators for estimating functionals
arXiv cs.LG / 4/22/2026
📰 NewsIdeas & Deep AnalysisModels & Research
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.
Related Articles
The 67th Attempt: When Your "Knowledge Management" System Becomes a Self-Fulfilling Prophecy of Excellence
Dev.to
Context Engineering for Developers: A Practical Guide (2026)
Dev.to
GPT-5.5 is here. So is DeepSeek V4. And honestly, I am tired of version numbers.
Dev.to
I Built an AI Image Workflow with GPT Image 2.0 (+ Fixing Its Biggest Flaw)
Dev.to
Max-and-Omnis/Nemotron-3-Super-64B-A12B-Math-REAP-GGUF
Reddit r/LocalLLaMA