Title of article
Influence of the temporal resolution of data on the success of indicator species models of species richness across multiple taxonomic groups Original Research Article
Author/Authors
James R. Thomson، نويسنده , , Erica Fleishman، نويسنده , , Ralph Mac Nally، نويسنده , , David S. Dobkin، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2005
Pages
16
From page
503
To page
518
Abstract
Indicator species models may be a cost-effective approach to estimating species richness across large areas. Obtaining reliable distributional data for indicator species (and therefore reliable estimates of species richness) often requires longitudinal data, that is, surveys for indicator species repeated for several years or time steps. Maximum information must be extracted from such data. We used genetic algorithms and a Bayesian approach to compare the influence of presence/absence data and reporting rate data (the proportion of survey years in which a species was present) on models of species richness based on indicator species. Using data on birds and butterflies from the Great Basin (Nevada, USA), we evaluated models of species richness for one taxonomic group based on indicator species drawn from the same taxonomic group and from a different group. We also evaluated models of combined species richness of both taxonomic groups based on indicator species drawn from either group. We identified suites of species whose occurrence patterns explained as much as 70% of deviance in species richness of a different taxonomic group. Validation tests revealed strong correlations between observed and predicted species richness, with 83–100% of the observed values falling within the 95% credible intervals of the predictions. Whether reporting rate data improved the explanatory and predictive ability of cross-taxonomic model3 depended on the taxonomic group of the indicator species. The discrepancy in predictive ability was smaller for same-taxon models. Our methods provide a manager with the means to maximize the information obtained from longitudinal survey data.
Keywords
Bird species richness , Butterfly species richness , Genetic algorithm , Great Basin , Bayesian Information Criterion , Land management , conservation
Journal title
Biological Conservation
Serial Year
2005
Journal title
Biological Conservation
Record number
837240
Link To Document