good : An R package for modelling count data

Publication date

2024-10-21



Abstract

Organisms-related data often appear as counts. The Poisson distribution is the most popular choice for modelling count data, but this distribution assumes equidispersion, which is usually not satisfied in real-world data. Deviations from the Poisson assumption lead to discrete-valued distributions that can fit over- and/or underdispersion. Although models for count data with over-dispersion have been widely considered in the literature, models for underdispersion-the opposite phenomenon-have received less attention because underdispersion is relatively common only in certain research fields, including ecology. The Good distribution is a flexible option for modelling count data with over-dispersion or underdispersion, although no R packages are available so far offering functionalities such as calculating quantiles, probabilities, etc., of a Good distribution or providing a method for modelling a Good-distributed output based on a number of potential predictors. This paper presents the R package good, which computes the standard probabilistic functions, generates random samples from a population following a Good distribution and estimates the Good regression.

Document Type

Article

Document version

Published version

Language

English

Pages

6 p.

Publisher

Wiley

Published in

Methods In Ecology And Evolution

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(c) 2024 The Author(s)

Attribution 4.0 International

(c) 2024 The Author(s)

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CRM Articles [713]