Estimating risks in declining populations with poor data


Autoria(s): Holmes, Elizabeth E.
Data(s)

24/04/2001

17/04/2001

Resumo

Census data on endangered species are often sparse, error-ridden, and confined to only a segment of the population. Estimating trends and extinction risks using this type of data presents numerous difficulties. In particular, the estimate of the variation in year-to-year transitions in population size (the “process error” caused by stochasticity in survivorship and fecundities) is confounded by the addition of high sampling error variation. In addition, the year-to-year variability in the segment of the population that is sampled may be quite different from the population variability that one is trying to estimate. The combined effect of severe sampling error and age- or stage-specific counts leads to severe biases in estimates of population-level parameters. I present an estimation method that circumvents the problem of age- or stage-specific counts and is markedly robust to severe sampling error. This method allows the estimation of environmental variation and population trends for extinction-risk analyses using corrupted census counts—a common type of data for endangered species that has hitherto been relatively unusable for these analyses.

Identificador

/pmc/articles/PMC33165/

/pubmed/11309483

http://dx.doi.org/10.1073/pnas.081055898

Idioma(s)

en

Publicador

The National Academy of Sciences

Direitos

Copyright © 2001, The National Academy of Sciences

Palavras-Chave #Biological Sciences
Tipo

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