| Literature DB >> 28307629 |
Peter Rothery1, Ian Newton1, Lois Dale1, Tomasz Wesolowski2.
Abstract
A test for density dependence in time-series data allowing for weather effects is presented. The test is based on a discrete time autoregressive model for changes in population density with a covariate for the effects of weather. The distribution of the test statistic on the null hypothesis of density independence is obtained by parametric bootstrapping. A computer simulation exercise is used to demonstrate the gain in statistical power by allowing for weather effects. Application of the method to time-series data on three species of butterflies and two species of songbirds showed stronger evidence of density dependence than two standard tests.Keywords: Autoregressive model; Butterfly and songbird populations; Key words Density dependence; Statistical power; Weather effects
Year: 1997 PMID: 28307629 DOI: 10.1007/s004420050340
Source DB: PubMed Journal: Oecologia ISSN: 0029-8549 Impact factor: 3.225