Selecting the number of imputed datasets when using multiple imputation for missing data and disclosure limitation
Jerome P. Reiter
Statistics & Probability Letters, 2008, vol. 78, issue 1, 15-20
Abstract:
Multiple imputation can handle missing data and disclosure limitation simultaneously. First, fill in the missing data to generate m completed datasets, then replace confidential values in each completed dataset with r imputations. I investigate how to select m and r.
Keywords: Confidentiality; Disclosure; Missing; data; Multiple; imputation; Synthetic; data (search for similar items in EconPapers)
Date: 2008
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