Adversarial Estimation of Riesz Representers
收藏Taylor & Francis Group2025-12-02 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/Adversarial_Estimation_of_Riesz_Representers/30764567/1
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资源简介:
Many causal parameters are linear functionals of an underlying regression. The Riesz representer is a key component in the asymptotic variance of a semiparametrically estimated linear functional. We propose an adversarial framework to estimate the Riesz representer using general function spaces. We prove a nonasymptotic mean square rate in terms of an abstract quantity called the critical radius, then specialize it for neural networks, random forests, and reproducing kernel Hilbert spaces as leading cases. Our estimators are highly compatible with targeted and debiased machine learning with sample splitting; our guarantees directly verify general conditions for inference that allow mis-specification. We also use our guarantees to prove inference without sample splitting, based on stability or complexity. Our estimators achieve nominal coverage in highly nonlinear simulations where some previous methods do not. They shed new light on the heterogeneous effects of matching grants.
提供机构:
Syrgkanis, Vasilis; Singh, Rahul; Chernozhukov, Victor; Newey, Whitney K.
创建时间:
2025-12-02



