4.3 Article

Doubly robust multiple imputation using kernel-based techniques

Journal

BIOMETRICAL JOURNAL
Volume 58, Issue 3, Pages 588-606

Publisher

WILEY
DOI: 10.1002/bimj.201400256

Keywords

Bandwidth; Bootstrap; Local imputation; Model misspecification; Nonparametric

Funding

  1. National Cancer Institute [P30 CA 23704, P30 CA016672]
  2. PCORI award [ME-1303-5840]
  3. NIH/NINDS [R21NS091630]

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We consider the problem of estimating the marginal mean of an incompletely observed variable and develop amultiple imputation approach. Using fully observed predictors, we first establish two working models: one predicts the missing outcome variable, and the other predicts the probability of missingness. The predictive scores from the two models are used to measure the similarity between the incomplete and observed cases. Based on the predictive scores, we construct a set of kernel weights for the observed cases, with higher weights indicating more similarity. Missing data are imputed by sampling from the observed cases with probability proportional to their kernel weights. The proposed approach can produce reasonable estimates for the marginal mean and has a double robustness property, provided that one of the two working models is correctly specified. It also shows some robustness against misspecification of both models. We demonstrate these patterns in a simulation study. In a real-data example, we analyze the total helicopter response time from injury in the Arizona emergency medical service data.

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