2020
DOI: 10.3390/f11020174
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Using Count Data Models to Predict Epiphytic Bryophyte Recruitment in Schima superba Gardn. et Champ. Plantations in Urban Forests

Abstract: Epiphytic bryophytes are known to perform essential ecosystem functions, but their sensitivity to environmental quality and change makes their survival and development vulnerable to global changes, especially habitat loss in urban environments. Fortunately, extensive urban tree planting programs worldwide have had a positive effect on the colonization and development of epiphytic bryophytes. However, how epiphytic bryophytes occur and grow on planted trees remain poorly known, especially in urban environments.… Show more

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Cited by 2 publications
(2 citation statements)
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“…We also incorporated a zero-inflation component in these models as there were many zeros in these data (i.e., surveys in which an animal was not captured) and as such these data were zero-inflated. We fitted the species richness models using a Poisson distribution, which is well-suited to count data that are nonnegative integers (Zhao et al, 2020). We conducted model fitting and verification for these models (and the Prediction 3 models) using the glmm TMB (Brooks et al, 2017) and MuMIn (Barton, 2022) packages in R version 4.2.2 (R Core Team, 2022), as well as the DHARMa package (Hartig, 2022) for model verification and to test for zero inflation.…”
Section: Discussionmentioning
confidence: 99%
“…We also incorporated a zero-inflation component in these models as there were many zeros in these data (i.e., surveys in which an animal was not captured) and as such these data were zero-inflated. We fitted the species richness models using a Poisson distribution, which is well-suited to count data that are nonnegative integers (Zhao et al, 2020). We conducted model fitting and verification for these models (and the Prediction 3 models) using the glmm TMB (Brooks et al, 2017) and MuMIn (Barton, 2022) packages in R version 4.2.2 (R Core Team, 2022), as well as the DHARMa package (Hartig, 2022) for model verification and to test for zero inflation.…”
Section: Discussionmentioning
confidence: 99%
“…Meanwhile, and perhaps most important, we have insufficient data on many classes of organisms, and vast numbers of species are still undiscovered (Mora et al, 2011). Numerous moss species need older trees with thicker moistureholding bark to survive droughts (Zhao et al, 2020). Native snails and insects are more abundant in older forests (Jordan and Black, 2012;Maloof, 2023).…”
Section: Impacts Of Forest Clearing Projects 21 Impacts On Biodiversitymentioning
confidence: 99%