TITLE

Bayesian perspectives for epidemiologic research. III. Bias analysis via missing-data methods

AUTHOR(S)
Greenland, Sander
PUB. DATE
August 2010
SOURCE
International Journal of Epidemiology;Aug2010, Vol. 39 Issue 4, p1116
SOURCE TYPE
Academic Journal
DOC. TYPE
Correction notice
ABSTRACT
A correction to the article "Bayesian perspectives for epidemiologic research. III. Bias analysis via missing-data methods" that was published in the 2009 issue is presented.
ACCESSION #
53376195

 

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