A novel statistical method for classifying habitat generalists and specialists

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A novel statistical method for classifying habitat generalists and specialists. / Chazdon, Robin L; Chao, Anne; Colwell, Robert K; Lin, Shang-Yi; Norden, Natalia; Letcher, Susan G; Clark, David B; Finegan, Bryan; Arroyo, J Pablo.

In: Ecology, Vol. 92, No. 6, 2011, p. 1332-1343.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Chazdon, RL, Chao, A, Colwell, RK, Lin, S-Y, Norden, N, Letcher, SG, Clark, DB, Finegan, B & Arroyo, JP 2011, 'A novel statistical method for classifying habitat generalists and specialists', Ecology, vol. 92, no. 6, pp. 1332-1343. https://doi.org/10.1890/10-1345.1

APA

Chazdon, R. L., Chao, A., Colwell, R. K., Lin, S-Y., Norden, N., Letcher, S. G., Clark, D. B., Finegan, B., & Arroyo, J. P. (2011). A novel statistical method for classifying habitat generalists and specialists. Ecology, 92(6), 1332-1343. https://doi.org/10.1890/10-1345.1

Vancouver

Chazdon RL, Chao A, Colwell RK, Lin S-Y, Norden N, Letcher SG et al. A novel statistical method for classifying habitat generalists and specialists. Ecology. 2011;92(6):1332-1343. https://doi.org/10.1890/10-1345.1

Author

Chazdon, Robin L ; Chao, Anne ; Colwell, Robert K ; Lin, Shang-Yi ; Norden, Natalia ; Letcher, Susan G ; Clark, David B ; Finegan, Bryan ; Arroyo, J Pablo. / A novel statistical method for classifying habitat generalists and specialists. In: Ecology. 2011 ; Vol. 92, No. 6. pp. 1332-1343.

Bibtex

@article{9c73f10791d24c248316e812ea09c1ea,
title = "A novel statistical method for classifying habitat generalists and specialists",
abstract = "We develop a novel statistical approach for classifying generalists and specialists in two distinct habitats. Using a multinomial model based on estimated species relative abundance in two habitats, our method minimizes bias due to differences in sampling intensities between two habitat types as well as bias due to insufficient sampling within each habitat. The method permits a robust statistical classification of habitat specialists and generalists, without excluding rare species a priori. Based on a user-defined specialization threshold, the model classifies species into one of four groups: (1) generalist; (2) habitat A specialist; (3) habitat B specialist; and (4) too rare to classify with confidence. We illustrate our multinomial classification method using two contrasting data sets: (1) bird abundance in woodland and heath habitats in southeastern Australia and (2) tree abundance in second-growth (SG) and old-growth (OG) rain forests in the Caribbean lowlands of northeastern Costa Rica. We evaluate the multinomial model in detail for the tree data set. Our results for birds were highly concordant with a previous nonstatistical classification, but our method classified a higher fraction (57.7%) of bird species with statistical confidence. Based on a conservative specialization threshold and adjustment for multiple comparisons, 64.4% of tree species in the full sample were too rare to classify with confidence. Among the species classified, OG specialists constituted the largest class (40.6%), followed by generalist tree species (36.7%) and SG specialists (22.7%). The multinomial model was more sensitive than indicator value analysis or abundance-based phi coefficient indices in detecting habitat specialists and also detects generalists statistically. Classification of specialists and generalists based on rarefied subsamples was highly consistent with classification based on the full sample, even for sampling percentages as low as 20%. Major advantages of the new method are (1) its ability to distinguish habitat generalists (species with no significant habitat affinity) from species that are simply too rare to classify and (2) applicability to a single representative sample or a single pooled set of representative samples from each of two habitat types. The method as currently developed can be applied to no more than two habitats at a time.",
keywords = "Algorithms, Animals, Birds, Costa Rica, Ecosystem, Models, Statistical, New South Wales, Population Density, Trees",
author = "Chazdon, {Robin L} and Anne Chao and Colwell, {Robert K} and Shang-Yi Lin and Natalia Norden and Letcher, {Susan G} and Clark, {David B} and Bryan Finegan and Arroyo, {J Pablo}",
year = "2011",
doi = "10.1890/10-1345.1",
language = "English",
volume = "92",
pages = "1332--1343",
journal = "Ecology",
issn = "0012-9658",
publisher = "JohnWiley & Sons, Inc.",
number = "6",

}

RIS

TY - JOUR

T1 - A novel statistical method for classifying habitat generalists and specialists

AU - Chazdon, Robin L

AU - Chao, Anne

AU - Colwell, Robert K

AU - Lin, Shang-Yi

AU - Norden, Natalia

AU - Letcher, Susan G

AU - Clark, David B

AU - Finegan, Bryan

AU - Arroyo, J Pablo

PY - 2011

Y1 - 2011

N2 - We develop a novel statistical approach for classifying generalists and specialists in two distinct habitats. Using a multinomial model based on estimated species relative abundance in two habitats, our method minimizes bias due to differences in sampling intensities between two habitat types as well as bias due to insufficient sampling within each habitat. The method permits a robust statistical classification of habitat specialists and generalists, without excluding rare species a priori. Based on a user-defined specialization threshold, the model classifies species into one of four groups: (1) generalist; (2) habitat A specialist; (3) habitat B specialist; and (4) too rare to classify with confidence. We illustrate our multinomial classification method using two contrasting data sets: (1) bird abundance in woodland and heath habitats in southeastern Australia and (2) tree abundance in second-growth (SG) and old-growth (OG) rain forests in the Caribbean lowlands of northeastern Costa Rica. We evaluate the multinomial model in detail for the tree data set. Our results for birds were highly concordant with a previous nonstatistical classification, but our method classified a higher fraction (57.7%) of bird species with statistical confidence. Based on a conservative specialization threshold and adjustment for multiple comparisons, 64.4% of tree species in the full sample were too rare to classify with confidence. Among the species classified, OG specialists constituted the largest class (40.6%), followed by generalist tree species (36.7%) and SG specialists (22.7%). The multinomial model was more sensitive than indicator value analysis or abundance-based phi coefficient indices in detecting habitat specialists and also detects generalists statistically. Classification of specialists and generalists based on rarefied subsamples was highly consistent with classification based on the full sample, even for sampling percentages as low as 20%. Major advantages of the new method are (1) its ability to distinguish habitat generalists (species with no significant habitat affinity) from species that are simply too rare to classify and (2) applicability to a single representative sample or a single pooled set of representative samples from each of two habitat types. The method as currently developed can be applied to no more than two habitats at a time.

AB - We develop a novel statistical approach for classifying generalists and specialists in two distinct habitats. Using a multinomial model based on estimated species relative abundance in two habitats, our method minimizes bias due to differences in sampling intensities between two habitat types as well as bias due to insufficient sampling within each habitat. The method permits a robust statistical classification of habitat specialists and generalists, without excluding rare species a priori. Based on a user-defined specialization threshold, the model classifies species into one of four groups: (1) generalist; (2) habitat A specialist; (3) habitat B specialist; and (4) too rare to classify with confidence. We illustrate our multinomial classification method using two contrasting data sets: (1) bird abundance in woodland and heath habitats in southeastern Australia and (2) tree abundance in second-growth (SG) and old-growth (OG) rain forests in the Caribbean lowlands of northeastern Costa Rica. We evaluate the multinomial model in detail for the tree data set. Our results for birds were highly concordant with a previous nonstatistical classification, but our method classified a higher fraction (57.7%) of bird species with statistical confidence. Based on a conservative specialization threshold and adjustment for multiple comparisons, 64.4% of tree species in the full sample were too rare to classify with confidence. Among the species classified, OG specialists constituted the largest class (40.6%), followed by generalist tree species (36.7%) and SG specialists (22.7%). The multinomial model was more sensitive than indicator value analysis or abundance-based phi coefficient indices in detecting habitat specialists and also detects generalists statistically. Classification of specialists and generalists based on rarefied subsamples was highly consistent with classification based on the full sample, even for sampling percentages as low as 20%. Major advantages of the new method are (1) its ability to distinguish habitat generalists (species with no significant habitat affinity) from species that are simply too rare to classify and (2) applicability to a single representative sample or a single pooled set of representative samples from each of two habitat types. The method as currently developed can be applied to no more than two habitats at a time.

KW - Algorithms

KW - Animals

KW - Birds

KW - Costa Rica

KW - Ecosystem

KW - Models, Statistical

KW - New South Wales

KW - Population Density

KW - Trees

U2 - 10.1890/10-1345.1

DO - 10.1890/10-1345.1

M3 - Journal article

C2 - 21797161

VL - 92

SP - 1332

EP - 1343

JO - Ecology

JF - Ecology

SN - 0012-9658

IS - 6

ER -

ID: 40323787