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Combining Inverse Probability Weighting and Multiple Imputation to Improve Robustness of Estimation
Authors:Peisong Han
Institution:Department of Statistics and Actuarial ScienceUniversity of Waterloo
Abstract:Inverse probability weighting (IPW) and multiple imputation are two widely adopted approaches dealing with missing data. The former models the selection probability, and the latter models data distribution. Consistent estimation requires correct specification of corresponding models. Although the augmented IPW method provides an extra layer of protection on consistency, it is usually not sufficient in practice as the true data‐generating process is unknown. This paper proposes a method combining the two approaches in the same spirit of calibration in sampling survey literature. Multiple models for both the selection probability and data distribution can be simultaneously accounted for, and the resulting estimator is consistent if any model is correctly specified. The proposed method is within the framework of estimating equations and is general enough to cover regression analysis with missing outcomes and/or missing covariates. Results on both theoretical and numerical investigation are provided.
Keywords:augmented inverse probability weighting (AIPW)  calibration  double robustness  empirical likelihood  missing at random (MAR)  multiple robustness
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