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Optimizing performance of nonparametric species richness estimators under constrained sampling

Understanding the functional relationship between the sample size and the performance of species richness estimators is necessary to optimize limited sampling resources against estimation error. Nonparametric estimators such as Chao and Jackknife demonstrate strong performances, but consensus is lac...

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Autores principales: Rajakaruna, Harshana, Drake, D. Andrew R., T. Chan, Farrah, Bailey, Sarah A.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: John Wiley and Sons Inc. 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5513256/
https://www.ncbi.nlm.nih.gov/pubmed/28725399
http://dx.doi.org/10.1002/ece3.2463
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author Rajakaruna, Harshana
Drake, D. Andrew R.
T. Chan, Farrah
Bailey, Sarah A.
author_facet Rajakaruna, Harshana
Drake, D. Andrew R.
T. Chan, Farrah
Bailey, Sarah A.
author_sort Rajakaruna, Harshana
collection PubMed
description Understanding the functional relationship between the sample size and the performance of species richness estimators is necessary to optimize limited sampling resources against estimation error. Nonparametric estimators such as Chao and Jackknife demonstrate strong performances, but consensus is lacking as to which estimator performs better under constrained sampling. We explore a method to improve the estimators under such scenario. The method we propose involves randomly splitting species‐abundance data from a single sample into two equally sized samples, and using an appropriate incidence‐based estimator to estimate richness. To test this method, we assume a lognormal species‐abundance distribution (SAD) with varying coefficients of variation (CV), generate samples using MCMC simulations, and use the expected mean‐squared error as the performance criterion of the estimators. We test this method for Chao, Jackknife, ICE, and ACE estimators. Between abundance‐based estimators with the single sample, and incidence‐based estimators with the split‐in‐two samples, Chao2 performed the best when CV < 0.65, and incidence‐based Jackknife performed the best when CV > 0.65, given that the ratio of sample size to observed species richness is greater than a critical value given by a power function of CV with respect to abundance of the sampled population. The proposed method increases the performance of the estimators substantially and is more effective when more rare species are in an assemblage. We also show that the splitting method works qualitatively similarly well when the SADs are log series, geometric series, and negative binomial. We demonstrate an application of the proposed method by estimating richness of zooplankton communities in samples of ballast water. The proposed splitting method is an alternative to sampling a large number of individuals to increase the accuracy of richness estimations; therefore, it is appropriate for a wide range of resource‐limited sampling scenarios in ecology.
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spelling pubmed-55132562017-07-19 Optimizing performance of nonparametric species richness estimators under constrained sampling Rajakaruna, Harshana Drake, D. Andrew R. T. Chan, Farrah Bailey, Sarah A. Ecol Evol Original Research Understanding the functional relationship between the sample size and the performance of species richness estimators is necessary to optimize limited sampling resources against estimation error. Nonparametric estimators such as Chao and Jackknife demonstrate strong performances, but consensus is lacking as to which estimator performs better under constrained sampling. We explore a method to improve the estimators under such scenario. The method we propose involves randomly splitting species‐abundance data from a single sample into two equally sized samples, and using an appropriate incidence‐based estimator to estimate richness. To test this method, we assume a lognormal species‐abundance distribution (SAD) with varying coefficients of variation (CV), generate samples using MCMC simulations, and use the expected mean‐squared error as the performance criterion of the estimators. We test this method for Chao, Jackknife, ICE, and ACE estimators. Between abundance‐based estimators with the single sample, and incidence‐based estimators with the split‐in‐two samples, Chao2 performed the best when CV < 0.65, and incidence‐based Jackknife performed the best when CV > 0.65, given that the ratio of sample size to observed species richness is greater than a critical value given by a power function of CV with respect to abundance of the sampled population. The proposed method increases the performance of the estimators substantially and is more effective when more rare species are in an assemblage. We also show that the splitting method works qualitatively similarly well when the SADs are log series, geometric series, and negative binomial. We demonstrate an application of the proposed method by estimating richness of zooplankton communities in samples of ballast water. The proposed splitting method is an alternative to sampling a large number of individuals to increase the accuracy of richness estimations; therefore, it is appropriate for a wide range of resource‐limited sampling scenarios in ecology. John Wiley and Sons Inc. 2016-09-22 /pmc/articles/PMC5513256/ /pubmed/28725399 http://dx.doi.org/10.1002/ece3.2463 Text en © 2016 The Authors. Ecology and Evolution published by John Wiley & Sons Ltd. This is an open access article under the terms of the Creative Commons Attribution (http://creativecommons.org/licenses/by/4.0/) License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Research
Rajakaruna, Harshana
Drake, D. Andrew R.
T. Chan, Farrah
Bailey, Sarah A.
Optimizing performance of nonparametric species richness estimators under constrained sampling
title Optimizing performance of nonparametric species richness estimators under constrained sampling
title_full Optimizing performance of nonparametric species richness estimators under constrained sampling
title_fullStr Optimizing performance of nonparametric species richness estimators under constrained sampling
title_full_unstemmed Optimizing performance of nonparametric species richness estimators under constrained sampling
title_short Optimizing performance of nonparametric species richness estimators under constrained sampling
title_sort optimizing performance of nonparametric species richness estimators under constrained sampling
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5513256/
https://www.ncbi.nlm.nih.gov/pubmed/28725399
http://dx.doi.org/10.1002/ece3.2463
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