Sparse data bias: a problem hiding in plain sight

Pages: i1981 - i1981
Published: Apr 27, 2016
Abstract
Effects of treatment or other exposure on outcome events are commonly measured by ratios of risks, rates, or odds. Adjusted versions of these measures are usually estimated by maximum likelihood regression (eg, logistic, Poisson, or Cox modelling). But resulting estimates of effect measures can have serious bias when the data lack adequate case numbers for some combination of exposure and outcome levels. This bias can occur even in quite large...
Paper Details
Title
Sparse data bias: a problem hiding in plain sight
Published Date
Apr 27, 2016
Journal
Pages
i1981 - i1981
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