| Literature DB >> 23453482 |
Haiyi Xie1, Jill Tao, Gregory J McHugo, Robert E Drake.
Abstract
Count data with skewness and many zeros are common in substance abuse and addiction research. Zero-adjusting models, especially zero-inflated models, have become increasingly popular in analyzing this type of data. This paper reviews and compares five mixed-effects Poisson family models commonly used to analyze count data with a high proportion of zeros by analyzing a longitudinal outcome: number of smoking quit attempts from the New Hampshire Dual Disorders Study. The findings of our study indicated that count data with many zeros do not necessarily require zero-inflated or other zero-adjusting models. For rare event counts or count data with small means, a simpler model such as the negative binomial model may provide a better fit.Entities:
Mesh:
Year: 2013 PMID: 23453482 DOI: 10.1016/j.jsat.2013.01.005
Source DB: PubMed Journal: J Subst Abuse Treat ISSN: 0740-5472