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- Title
How robust are popular beta diversity indices to sampling error?
- Authors
Schroeder, P. Jason; Jenkins, David G.
- Abstract
Beta diversity (β) is used in biogeography, ecology, and conservation to assess the heterogeneity of local communities. Ideally, researchers could include sensitivity to error in the list of reasons to choose a β index. However, only numerical undersampling has been rigorously studied. This study compared multiple β indices to determine which are most robust to geographic undersampling, numerical undersampling, and taxonomic error using simulated landscapes. For these landscapes, eight β indices were chosen to represent families of β and used to measure real and errant data. Six indices used both presence-- absence and abundance data, while two more used only abundance data. Six of the abundance-based indices had adjusted versions for individual undersampling, and these versions were also evaluated (total = 14 indices). Presence--absence- and abundance-based indices were comparable in sensitivity to total method error. Numerical undersampling and taxonomic error generally caused more error in β than randomly distributed geographic undersampling. Among presence--absence-based indices, Jaccard's dissimilarity was the most robust to error overall, while β-3 was the most robust among narrow-sense measures. Among abundance-based indices, Bray-Curtis and BDTOTAL were the most robust to error. Some commonly used β indices (e.g., Sorensen, Simpson) are relatively unreliable given errors of taxonomy or numerical undersampling. Future studies of β should focus on using more robust indices (Jaccard, Bray-Curtis, BDTOTAL), and past studies based on error-sensitive indices should be considered with caution. Studies of β should emphasize adequate numerical sampling and taxonomic accuracy to minimize errors in β.
- Subjects
BIOGEOGRAPHY; ECOLOGY; CONSERVATION of natural resources; SENSITIVITY analysis; NUMERICAL analysis
- Publication
Ecosphere, 2018, Vol 9, Issue 2, p1
- ISSN
2150-8925
- Publication type
Article
- DOI
10.1002/ecs2.2100