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Fitting host-parasitoid models with CV2 > 1 using hierarchical generalized linear models.


ABSTRACT: The powerful general Pacala-Hassell host-parasitoid model for a patchy environment, which allows host density-dependent heterogeneity (HDD) to be distinguished from between-patch, host density-independent heterogeneity (HDI), is reformulated within the class of the generalized linear model (GLM) family. This improves accessibility through the provision of general software within well-known statistical systems, and allows a rich variety of models to be formulated. Covariates such as age class, host density and abiotic factors may be included easily. For the case where there is no HDI, the formulation is a simple GLM. When there is HDI in addition to HDD, the formulation is a hierarchical generalized linear model. Two forms of HDI model are considered, both with between-patch variability: one has binomial variation within patches and one has extra-binomial, overdispersed variation within patches. Examples are given demonstrating parameter estimation with standard errors, and hypothesis testing. For one example given, the extra-binomial component of the HDI heterogeneity in parasitism is itself shown to be strongly density dependent.

SUBMITTER: Perry JN 

PROVIDER: S-EPMC1690783 | biostudies-literature | 2000 Oct

REPOSITORIES: biostudies-literature

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Fitting host-parasitoid models with CV2 > 1 using hierarchical generalized linear models.

Perry J N JN   Noh M S MS   Lee Y Y   Alston R D RD   Norowi H M HM   Powell W W   Rennolls K K  

Proceedings. Biological sciences 20001001 1457


The powerful general Pacala-Hassell host-parasitoid model for a patchy environment, which allows host density-dependent heterogeneity (HDD) to be distinguished from between-patch, host density-independent heterogeneity (HDI), is reformulated within the class of the generalized linear model (GLM) family. This improves accessibility through the provision of general software within well-known statistical systems, and allows a rich variety of models to be formulated. Covariates such as age class, ho  ...[more]

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