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Confidence Intervals for Nonparametric Regression Functions with Missing Data
Authors:Yongsong Qin  Tao Qiu  Qingzhu Lei
Affiliation:1. Department of Mathematics, Zhejiang Normal University, Jinhua, Zhejiang, China;2. Department of Mathematics, Guangxi Normal University, Guangxi, China
Abstract:
Suppose that we have a nonparametric regression model Y = m(X) + ε with XRp, where X is a random design variable and is observed completely, and Y is the response variable and some Y-values are missing at random. Based on the “complete” data sets for Y after nonaprametric regression imputation and inverse probability weighted imputation, two estimators of the regression function m(x0) for fixed x0Rp are proposed. Asymptotic normality of two estimators is established, which is used to construct normal approximation-based confidence intervals for m(x0). We also construct an empirical likelihood (EL) statistic for m(x0) with limiting distribution of χ21, which is used to construct an EL confidence interval for m(x0).
Keywords:Confidence interval  Empirical likelihood  Inverse probability weighted imputation  Nonparametric regression model  Missing at random
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