Published 2008 | Version v1
Journal article Restricted

Regression Models for Count Data in R

Description

(Uploaded by Plazi for the Bat Literature Project) The classical Poisson, geometric and negative binomial regression models for count data belong to the family of generalized linear models and are available at the core of the statistics toolbox in the R system for statistical computing. After reviewing the conceptual and computational features of these methods, a new implementation of hurdle and zero-inflated regression models in the functions hurdle() and zeroinfl() from the package pscl is introduced. It re-uses design and functionality of the basic R functions just as the underlying conceptual tools extend the classical models. Both hurdle and zeroinflated model, are able to incorporate over-dispersion and excess zeros—two problems that typically occur in count data sets in economics and the social sciences—better than their classical counterparts. Using cross-section data on the demand for medical care, it is illustrated how the classical as well as the zero-augmented models can be fitted, inspected and tested in practice.

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Identifiers

URL
hash://md5/29d5bfaff9d65c4dece16ac2f9d2bb21
URN
urn:lsid:zotero.org:groups:5435545:items:BK47QDF9
DOI
10.18637/jss.v027.i08

Biodiversity

Kingdom
Animalia
Phylum
Chordata
Class
Mammalia
Order
Chiroptera