1 / 25

Biological diversity estimation and comparison: problems and solutions

Biological diversity estimation and comparison: problems and solutions W.B. Batista, S.B. Perelman and L.E. Puhl. A simple conceptual model of plant-species diversity The rationale of diversity estimation Some essential diversity-estimator functions Parametric Non-parametric

jcraven
Télécharger la présentation

Biological diversity estimation and comparison: problems and solutions

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Biological diversity estimation and comparison: problems and solutions W.B. Batista, S.B. Perelman and L.E. Puhl

  2. A simple conceptual model of plant-species diversity • The rationale of diversity estimation • Some essential diversity-estimator functions • Parametric • Non-parametric • Coverage based • Assessment of diversity estimators: a modeling exercise

  3. d, local diversity a, arrival rate e, local-extinction rate , among-location diversity (heterogeneity) Conceptual model S, total diversity

  4. d, local diversity Conceptual model S, total diversity

  5. Conceptual model

  6. Conceptual model

  7. frequency d S-d RURAL CORE SATELLITE URBAN density Conceptual model

  8. S, total diversity Diversity estimation N, quadrat number D, total number of observed species ni, frequency of species i q(k), number of species for which ni, = k

  9. Diversity estimation

  10. Diversity estimation

  11. Diversity estimation

  12. Diversity estimation

  13. Decreases with increasing density • Increases with increasing aggregation • High for urban and satellite species • Low for rural and core species Diversity-estimator functions S, total diversity D, total number of observed species ni, frequency of species I q(k), number of species for which ni, = k

  14. Non- Parametric Estimation • Depend on no assumptions about the probability distributions of species densities e.g. First order Jackknife Chao estimator 1 Diversity-estimator functions Parametric Estimation • Based on specific assumptions about the probability distributions of species densities • Maximize the Likelihood of the observed q(k) as a function of S and the parameters of the probability distributions of species densities.

  15. If all species had equal density, and therefore Diversity-estimator functions Coverage-based Estimation • Coverage is the sum of the proportions of total density accounted for by all species encountered in the sample. • Anne Chao has developed coverage-based estimators by for the general case of unequal densities based on the coverage of infrequent species

  16. Diversity-estimator functions A panoply of diversity estimators • Parametric • Beta binomial CMLE • Beta binomial UMLE • Non-Parametric • Chao 2 • Chao 2 bias corrected • 1st order Jackknife • 2nd order Jackknife • Coverage-based • Model(h) Incidence Coverage Estimator • Model(h)-1 or ICE1 • Model(th) • Model(th)1 • Bayesian estimators

  17. Assessment of diversity estimators: a modeling exercise • 4 scenarios of species density distribution • 20 samples of size N=20 per scenario • Using program SPADE by Anne Chao to calculate different diversity estimators • Summary of estimator performance under all 4 scenarios

  18. Modeling exercise Scenario 1 S=100, few rare species, no aggregation pattern

  19. Modeling exercise Scenario 2 S=100, many rare species, no aggregation pattern

  20. Modeling exercise Scenario 3 S=100, few rare species, with aggregation pattern

  21. Modeling exercise Scenario 4 S=100, many rare species, with aggregation pattern

  22. Modeling exercise Scenario 1

  23. Observed species number • Jackknife • Chao • ICE • Bayesian

  24. Modeling exercise • Parametric estimators either failed to converge or produced extremely biased results. • When no species were very rare and no species had aggregation pattern most estimators worked well, but then so did the naïve estimator D. • Some of the coverage-based estimators were relatively robust to the differences among the scenarios we tested.

  25. Diversity estimation is a delicate task. • It should be aided by assessment of the patterns of species density and aggregation.

More Related