Literature DB >> 29892335

An efficient extension of N-mixture models for multi-species abundance estimation.

Juan Pablo Gomez1,2,3,4, Scott K Robinson2, Jason K Blackburn3,4, José Miguel Ponciano1.   

Abstract

In this study we propose an extension of the N-mixture family of models that targets an improvement of the statistical properties of rare species abundance estimators when sample sizes are low, yet typical for tropical studies. The proposed method harnesses information from other species in an ecological community to correct each species' estimator. We provide guidance to determine the sample size required to estimate accurately the abundance of rare tropical species when attempting to estimate the abundance of single species.We evaluate the proposed methods using an assumption of 50 m radius plots and perform simulations comprising a broad range of sample sizes, true abundances and detectability values and a complex data generating process. The extension of the N-mixture model is achieved by assuming that the detection probabilities are drawn at random from a beta distribution in a multi-species fashion. This hierarchical model avoids having to specify a single detection probability parameter per species in the targeted community. Parameter estimation is done via Maximum Likelihood.We compared our multi-species approach with previously proposed multi-species N-mixture models, which we show are biased when the true densities of species in the community are less than seven individuals per 100 hectares. The beta N-mixture model proposed here outperforms the traditional Multi-species N-mixture model by allowing the estimation of organisms at lower densities and controlling the bias in the estimation.We illustrate how our methodology can be used to suggest sample sizes required to estimate the abundance of organisms, when these are either rare, common or abundant. When the interest is full communities, we show how the multi-species approaches, and in particular our beta model and estimation methodology, can be used as a practical solution to estimate organism densities from rapid inventory datasets. The statistical inferences done with our model via Maximum Likelihood can also be used to group species in a community according to their detectabilities.

Entities:  

Keywords:  Community Abundance Models; Data Cloning; Hierarchical models; Maximum Likelihood estimation; Rare species; Sample Size Estimation; Tropical Species

Year:  2017        PMID: 29892335      PMCID: PMC5992910          DOI: 10.1111/2041-210X.12856

Source DB:  PubMed          Journal:  Methods Ecol Evol            Impact factor:   7.781


  17 in total

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Journal:  Ecol Appl       Date:  2009-04       Impact factor: 4.657

4.  Modeling abundance using N-mixture models: the importance of considering ecological mechanisms.

Authors:  Liana N Joseph; Ché Elkin; Tara G Martin; Hugh P Possinghami
Journal:  Ecol Appl       Date:  2009-04       Impact factor: 4.657

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Authors:  Kelly J Iknayan; Morgan W Tingley; Brett J Furnas; Steven R Beissinger
Journal:  Trends Ecol Evol       Date:  2013-12-05       Impact factor: 17.712

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Journal:  Ecology       Date:  2013-07       Impact factor: 5.499

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Journal:  Ecol Lett       Date:  2005-11       Impact factor: 9.492

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Authors:  Richard B Chandler; David I King; Raul Raudales; Richard Trubey; Carlin Chandler; Víctor Julio Arce Chávez
Journal:  Conserv Biol       Date:  2013-04-02       Impact factor: 6.560

9.  Cryptic loss of montane avian richness and high community turnover over 100 years.

Authors:  Morgan W Tingley; Steven R Beissinger
Journal:  Ecology       Date:  2013-03       Impact factor: 5.499

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Authors:  Jean-Yves Barnagaud; Luc Barbaro; Julien Papaïx; Marc Deconchat; Eckehard G Brockerhoff
Journal:  Ecology       Date:  2014-01       Impact factor: 5.499

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