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Integrating Multisource Block-Wise Missing Data in Model Selection

Fei Xue, Annie Qu

2020Journal of the American Statistical Association63 citationsDOI

Abstract

For multisource data, blocks of variable information from certain sources are likely missing. Existing methods for handling missing data do not take structures of block-wise missing data into consideration. In this article, we propose a multiple block-wise imputation (MBI) approach, which incorporates imputations based on both complete and incomplete observations. Specifically, for a given missing pattern group, the imputations in MBI incorporate more samples from groups with fewer observed variables in addition to the group with complete observations. We propose to construct estimating equations based on all available information, and integrate informative estimating functions to achieve efficient estimators. We show that the proposed method has estimation and model selection consistency under both fixed-dimensional and high-dimensional settings. Moreover, the proposed estimator is asymptotically more efficient than the estimator based on a single imputation from complete observations only. In addition, the proposed method is not restricted to missing completely at random. Numerical studies and ADNI data application confirm that the proposed method outperforms existing variable selection methods under various missing mechanisms. Supplementary materials for this article are available online.

Topics & Concepts

Missing dataImputation (statistics)EstimatorComputer scienceData miningConsistency (knowledge bases)Block (permutation group theory)Feature selectionModel selectionAlgorithmStatisticsMathematicsArtificial intelligenceMachine learningGeometryStatistical Methods and InferenceStatistical Methods and Bayesian InferenceAdvanced Causal Inference Techniques
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