If you are seeing this message, you may be experiencing temporary network problems. Please wait a few minutes and refresh the page. If the problem persists, you may wish to report it to your local Network Manager.
It is also possible that your web browser is not configured or not able to display style sheets. In this case, although the visual presentation will be degraded, the site should continue to be functional. We recommend using the latest version of Microsoft or Mozilla web browser to help minimise these problems.
Wiley InterScience | |||||||||||
![]() Ecology LettersVolume 10 Issue 12, Pages 1182 - 1198 Published Online: 4 Sep 2007 Journal compilation © 2010 Blackwell Publishing Ltd/CNRS Published on behalf of the Centre National de la Recherche Scientifique
Abstract | References | Full Text: HTML, PDF (Size: 667K) | Supporting Information | Related Articles | Citation Tracking REVIEW AND SYNTHESIS A statistical approach to quasi-extinction forecasting Copyright 2007 Blackwell Publishing Ltd/CNRS KEYWORDS Extinction analysis • population models • population viability analysis • stochastic estimation • stochastic models ABSTRACTForecasting population decline to a certain critical threshold (the quasi-extinction risk) is one of the central objectives of population viability analysis (PVA), and such predictions figure prominently in the decisions of major conservation organizations. In this paper, we argue that accurate forecasting of a population's quasi-extinction risk does not necessarily require knowledge of the underlying biological mechanisms. Because of the stochastic and multiplicative nature of population growth, the ensemble behaviour of population trajectories converges to common statistical forms across a wide variety of stochastic population processes. This paper provides a theoretical basis for this argument. We show that the quasi-extinction surfaces of a variety of complex stochastic population processes (including age-structured, density-dependent and spatially structured populations) can be modelled by a simple stochastic approximation: the stochastic exponential growth process overlaid with Gaussian errors. Using simulated and real data, we show that this model can be estimated with 20–30 years of data and can provide relatively unbiased quasi-extinction risk with confidence intervals considerably smaller than (0,1). This was found to be true even for simulated data derived from some of the noisiest population processes (density-dependent feedback, species interactions and strong age-structure cycling). A key advantage of statistical models is that their parameters and the uncertainty of those parameters can be estimated from time series data using standard statistical methods. In contrast for most species of conservation concern, biologically realistic models must often be specified rather than estimated because of the limited data available for all the various parameters. Biologically realistic models will always have a prominent place in PVA for evaluating specific management options which affect a single segment of a population, a single demographic rate, or different geographic areas. However, for forecasting quasi-extinction risk, statistical models that are based on the convergent statistical properties of population processes offer many advantages over biologically realistic models. Editor, Steve Beissinger Manuscript received 27 March 2007 First decision made 11 May 2007 |
|
|
Click here to ‘Become a Fan’ of Ecology Letters on FaceBook.
![]() |