4.2 Article

Empirical Likelihood Confidence Intervals for Response Mean with Data Missing at Random

Journal

SCANDINAVIAN JOURNAL OF STATISTICS
Volume 36, Issue 4, Pages 671-685

Publisher

WILEY
DOI: 10.1111/j.1467-9469.2009.00651.x

Keywords

bandwidth; confidence interval; empirical likelihood; kernel regression imputation method; missing at random; response mean

Funding

  1. National Natural Science Foundation of China [10871013]
  2. Beijing Natural Science Foundation [1072004]
  3. PhD Program Foundation of Ministry of Education of China [20070005003]

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A kernel regression imputation method for missing response data is developed. A class of bias-corrected empirical log-likelihood ratios for the response mean is defined. It is shown that any member of our class of ratios is asymptotically chi-squared, and the corresponding empirical likelihood confidence interval for the response mean is constructed. Our ratios share some of the desired features of the existing methods: they are self-scale invariant and no plug-in estimators for the adjustment factor and asymptotic variance are needed; when estimating the non-parametric function in the model, undersmoothing to ensure root-n consistency of the estimator for the parameter is avoided. Since the range of bandwidths contains the optimal bandwidth for estimating the regression function, the existing data-driven algorithm is valid for selecting an optimal bandwidth. We also study the normal approximation-based method. A simulation study is undertaken to compare the empirical likelihood with the normal approximation method in terms of coverage accuracies and average lengths of confidence intervals.

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