Using observation-level random effects to model overdispersion in count data in ecology and evolution
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Abstract
Overdispersion is common in models of count data in ecology and evolutionary biology, and can occur due to missing covariates, non-independent (aggregated) data, or an excess frequency of zeroes (zero-inflation). Accounting for overdispersion in such models is vital, as failing to do so can lead to biased parameter estimates, and false conclusions regarding hypotheses of interest. Observation-level random effects (OLRE), where each data point receives a unique level of a random effect that models the extra-Poisson variation present in the data, are commonly employed to cope with overdispersion in count data. However studies investigating the efficacy of observation-level random effects as a means to deal with…
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Topics
Keywords
- Overdispersion
- Count data
- Quasi-likelihood
- Poisson distribution
- Statistics
- Mathematics
- Econometrics
- Random effects model
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