Multiple Imputation for Interval Estimation From Simple Random Samples With Ignorable Nonresponse
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Publication:4722991
DOI10.2307/2289225zbMath0615.62011OpenAlexW4240767913MaRDI QIDQ4722991
Donald B. Rubin, Nathaniel Schenker
Publication date: 1986
Full work available at URL: https://doi.org/10.2307/2289225
interval estimationmissing datamultiple imputationcoverage probabilitiessimple random samplingsample surveyssingle imputationhot deckignorable nonresponse
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