Asymptotic equivalence for nonparametric regression with multivariate and random design
classification
🧮 math.ST
stat.TH
keywords
asymptoticdesignequivalencemultivariatenonparametricrandomregressionachieve
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We show that nonparametric regression is asymptotically equivalent in Le Cam's sense with a sequence of Gaussian white noise experiments as the number of observations tends to infinity. We propose a general constructive framework based on approximation spaces, which permits to achieve asymptotic equivalence even in the cases of multivariate and random design.
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