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A simple approach to construct confidence bands for a regression function with incomplete data

Abstract

A long-standing problem in the construction of asymptotically correct confidence bands for a regression function m(x)=E[YX=x]m(x)=E[Y|X=x], where YY is the response variable influenced by the covariate XX, involves the situation where YY values may be missing at random, and where the selection probability, the density function f(x)f(x) of XX, and the conditional variance of YY given XX are all completely unknown. This can be particularly more complicated in nonparametric situations. In this paper we propose a new kernel-type regression estimator and study the limiting distribution of the properly normalized versions of the maximal deviation of the proposed estimator from the true regression curve. The resulting limiting distribution will be used to construct uniform confidence bands for the underlying regression curve with asymptotically correct coverages. The focus of the current paper is on the case where XRX\in \mathbb{R}. We also perform numerical studies to assess the finite-sample performance of the proposed method. In this paper, both mechanics and the theoretical validity of our methods are discussed.

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