Accelerated convergence for nonparametric regression with coarsened predictors
Aurore Delaigle, Peter Hall, Hans-Georg M\"uller

TL;DR
This paper develops a method for nonparametric regression estimation when predictors are measured with noise or contamination, achieving fast convergence rates and providing confidence intervals, with validation through simulations and real data.
Contribution
The paper introduces a novel estimator for regression functions with coarsened predictors that attains d7d7d7nd7d7 convergence rates and establishes its theoretical properties.
Findings
Achieves d7d7d7nd7d7 convergence rates.
Provides Gaussian limit process for the estimator and derivatives.
Demonstrates good finite sample performance through simulations and real data.
Abstract
We consider nonparametric estimation of a regression function for a situation where precisely measured predictors are used to estimate the regression curve for coarsened, that is, less precise or contaminated predictors. Specifically, while one has available a sample of independent and identically distributed data, representing observations with precisely measured predictors, where , instead of the smooth regression function , the target of interest is another smooth regression function that pertains to predictors that are noisy versions of the . Our target is then the regression function , where is a contaminated version of , that is, . It is assumed that either the density of the errors is known, or replicated data are available resembling, but not necessarily the same as, the…
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