Pick your Poisson: Regression models for count data in school violence research

Jan 1, 2012·
Francis L. Huang
Francis L. Huang
,
D. Cornell
· 0 min read
Abstract
School violence research is often concerned with infrequently occurring events such as counts of the number of bullying incidents or fights a student may experience. Analyzing count data using ordinary least squares regression may produce improbable predicted values, and as a result of regression assumption violations, result in higher Type I errors. Count data are optimally analyzed using Poisson-based regression techniques such as Poisson or negative binomial regression. We apply these techniques to an example study of bullying in a statewide sample of 290 high schools and explain how Poisson-based analyses, although less familiar to many researchers, can produce findings that are more accurate and reliable, and are easier to interpret in real-world contexts.
Type
Publication
Journal of School Violence, 11, 187-206
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Francis L. Huang
Authors
Professor / Methodology Co-Director