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A Bayesian Dirichlet process community occupancy model to estimate community structure and species similarity
by
Link, William A.
, Ayebare, Samuel
, Mulondo, Paul
, Johnson, Devin S.
, Eaton, Mitchell Joseph
, Plumptre, Andrew J.
, Prinsloo, Sarah
, Sollmann, Rahel
in
Algorithms
/ Bayes Theorem
/ Bayesian analysis
/ Bayesian theory
/ bird point‐counts
/ Birds
/ Clustering
/ community occupancy model
/ Community structure
/ Computer applications
/ Computer Simulation
/ data collection
/ dimensionality
/ Dirichlet problem
/ Dirichlet process
/ Ecosystem
/ Environmental conditions
/ Estimates
/ Geographical distribution
/ habitats
/ infinite‐mixture models
/ latent groups
/ Mathematical models
/ Occupancy
/ Parameter estimation
/ Parameter sensitivity
/ Probabilistic models
/ probability
/ shrinkage
/ Similarity
/ Species
/ Uganda
/ Woodlands
2021
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A Bayesian Dirichlet process community occupancy model to estimate community structure and species similarity
by
Link, William A.
, Ayebare, Samuel
, Mulondo, Paul
, Johnson, Devin S.
, Eaton, Mitchell Joseph
, Plumptre, Andrew J.
, Prinsloo, Sarah
, Sollmann, Rahel
in
Algorithms
/ Bayes Theorem
/ Bayesian analysis
/ Bayesian theory
/ bird point‐counts
/ Birds
/ Clustering
/ community occupancy model
/ Community structure
/ Computer applications
/ Computer Simulation
/ data collection
/ dimensionality
/ Dirichlet problem
/ Dirichlet process
/ Ecosystem
/ Environmental conditions
/ Estimates
/ Geographical distribution
/ habitats
/ infinite‐mixture models
/ latent groups
/ Mathematical models
/ Occupancy
/ Parameter estimation
/ Parameter sensitivity
/ Probabilistic models
/ probability
/ shrinkage
/ Similarity
/ Species
/ Uganda
/ Woodlands
2021
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A Bayesian Dirichlet process community occupancy model to estimate community structure and species similarity
by
Link, William A.
, Ayebare, Samuel
, Mulondo, Paul
, Johnson, Devin S.
, Eaton, Mitchell Joseph
, Plumptre, Andrew J.
, Prinsloo, Sarah
, Sollmann, Rahel
in
Algorithms
/ Bayes Theorem
/ Bayesian analysis
/ Bayesian theory
/ bird point‐counts
/ Birds
/ Clustering
/ community occupancy model
/ Community structure
/ Computer applications
/ Computer Simulation
/ data collection
/ dimensionality
/ Dirichlet problem
/ Dirichlet process
/ Ecosystem
/ Environmental conditions
/ Estimates
/ Geographical distribution
/ habitats
/ infinite‐mixture models
/ latent groups
/ Mathematical models
/ Occupancy
/ Parameter estimation
/ Parameter sensitivity
/ Probabilistic models
/ probability
/ shrinkage
/ Similarity
/ Species
/ Uganda
/ Woodlands
2021
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A Bayesian Dirichlet process community occupancy model to estimate community structure and species similarity
Journal Article
A Bayesian Dirichlet process community occupancy model to estimate community structure and species similarity
2021
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Overview
Community occupancy models estimate species-specific parameters while sharing information across species by treating parameters as sampled from a common distribution. When communities consist of discrete groups, shrinkage of estimates toward the community mean can mask differences among groups. Infinite-mixture models using a Dirichlet process (DP) distribution, in which the number of latent groups is estimated from the data, have been proposed as a solution. In addition to community structure, these models estimate species similarity, which allows testing hypotheses about whether traits drive species response to environmental conditions. We develop a community occupancy model (COM) using a DP distribution to model species-level parameters. Because clustering algorithms are sensitive to dimensionality and distinctiveness of clusters, we conducted a simulation study to explore performance of the DP-COM with different dimensions (i.e., different numbers of model parameters with species-level DP random effects) and under varying cluster differences. Because the DP-COM is computationally expensive, we compared its estimates to a COM with a normal random species effect. We further applied the DP-COM model to a bird data set from Uganda. Estimates of the number of clusters and species cluster identity improved with increasing difference among clusters and increasing dimensions of the DP; but the number of clusters was always overestimated. Estimates of number of sites occupied and species and community-level covariate coefficients on occupancy probability were generally unbiased with (near-) nominal 95% Bayesian Credible Interval coverage. Accuracy of estimates from the normal and the DP-COM was similar. The DP-COM clustered 166 bird species into 27 clusters regarding their affiliation with open or woodland habitat and distance to oil wells. Estimates of covariate coefficients were similar between a normal and the DP-COM. Except sunbirds, species within a family were not more similar in their response to these covariates than the overall community. Given that estimates were consistent between the normal and the DP-COM, and considering the computational burden for the DP models, we recommend using the DP-COM only when the analysis focuses on community structure and species similarity, as these quantities can only be obtained under the DP-COM.
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