Confidence Intervals Based on Local Linear Smoother |
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Authors: | SONG XI CHEN,& YONG SONG QIN |
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Affiliation: | National University of Singapore,;University of Science and Technology of China |
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Abstract: | Point-wise confidence intervals for a non-parametric regression function in conjunction with the popular local linear smoother are considered. The confidence intervals are based on the asymptotic normal distribution of the local linear smoother. Their coverage accuracy is evaluated by developing Edgeworth expansion for the coverage probability. It is found that the coverage error near the boundary of the support of the regression function is of a larger order than that in the interior, which implies that the local linear smoother is not adaptive to the boundary in terms of coverage. This is quite unexpected as the local linear smoother is adaptive to the boundary in terms of the mean squared error. |
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Keywords: | confidence interval coverage probability Edgeworth expansion non-parametric regression normal approximation |
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