2020
DOI: 10.3390/e22101154
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A Nuisance-Free Inference Procedure Accounting for the Unknown Missingness with Application to Electronic Health Records

Abstract: We study how to conduct statistical inference in a regression model where the outcome variable is prone to missing values and the missingness mechanism is unknown. The model we consider might be a traditional setting or a modern high-dimensional setting where the sparsity assumption is usually imposed and the regularization technique is popularly used. Motivated by the fact that the missingness  mechanism, albeit usually treated as a nuisance, is difficult to specify correctly, we adopt the conditional likelih… Show more

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