Abstract
Questions: Many methods have been developed to estimate species richness but few are useful for estimating regional richness. We compared the performance of commonly used non-parametric and area-based estimators with a particular focus on testing a newly developed but little tested maximum entropy method (MaxEnt). Location: Tropical forest of Jianfengling Reserve, Hainan Island, China. Methods: We extrapolated species richness on 12 estimators up to a larger regional scale - the reserve (472 km 2) - where 164 25 m × 25 m quadrats were distributed on a grid of 160 km 2 within the tropical forest. We also analysed the effects of base (or 'anchor') scale A 0 on the species richness estimated (S est) with MaxEnt. Results: Six non-parametric methods underestimated the species richness, while six area-based methods overestimated the species richness. The accuracy of the MaxEnt estimate (S est) was improved with the increase of base scale A 0. Conclusions: Our findings suggest non-parametric methods should not be used to estimate richness across heterogeneous landscapes but can be used in well-defined sampling areas. Jack2 is the best of the six non-parametric methods, while the logistic model and the MaxEnt method seem to be the best of the six area-based methods. Improvements to the MaxEnt method are possible but that will require reformulation of the method by considering species-abundance distributions other than log-series and more general spatial allocation rules.
| Original language | English |
|---|---|
| Pages (from-to) | 1006-1012 |
| Number of pages | 7 |
| Journal | Journal of Vegetation Science |
| Volume | 23 |
| Issue number | 6 |
| DOIs | |
| State | Published - Dec 2012 |
| Externally published | Yes |
Keywords
- Area-based methods
- Estimation of species richness
- Maximum entropy
- Non-parametric methods
- Regional scale