TITLE

A Comparison of Hot Deck Imputation and Substitution Methods in The Estimation of Missing Data

PUB. DATE
January 2011
SOURCE
Gazi University Journal of Science;2011, Vol. 24 Issue 1, p69
SOURCE TYPE
Academic Journal
DOC. TYPE
Article
ABSTRACT
No abstract available.
ACCESSION #
59778423

 

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