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Papers/Semiparametrically Efficient Inference for Kernel Measures of Noise Heterogeneity
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Semiparametrically Efficient Inference for Kernel Measures of Noise Heterogeneity

May 26, 2026

arXiv
Abstract

We develop semiparametrically efficient inference for kernel measures of noise heterogeneity in additive noise models. In many applications, the regression function is estimated using flexible machine learning methods. Downstream procedures based on the resulting residuals can then inherit first-stage bias: regression error may induce spurious dependence between covariates and residuals, invalidating the assumptions needed for standard analysis. We construct a novel Hilbert-valued one-step estimator of the kernel covariance operator between covariates and residuals. Our estimator yields bootstrap-calibrated tests for residual independence and goodness of fit in additive noise models, while also providing asymptotically efficient confidence intervals for the kernel dependence measure under noise heterogeneity. The framework extends to settings with additional covariates, enabling inference on distributional heterogeneity of residual noise across treatment groups. Simulations show improved calibration and power relative to naive plug-in residual methods.

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Authors
Jakub Wornbard, Zikai Shen, Dimitri Meunier, Arthur Gretton
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arXiv:2605.27526