2010
DOI: 10.1111/j.1541-0420.2010.01465.x
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Models for Estimating Abundance from Repeated Counts of an Open Metapopulation

Abstract: Using only spatially and temporally replicated point counts, Royle (2004b, Biometrics 60, 108-115) developed an N-mixture model to estimate the abundance of an animal population when individual animal detection probability is unknown. One assumption inherent in this model is that the animal populations at each sampled location are closed with respect to migration, births, and deaths throughout the study. In the past this has been verified solely by biological arguments related to the study design as no statist… Show more

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Cited by 313 publications
(499 citation statements)
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References 27 publications
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“…pcountOpen fits the open population model of Dail and Madsen (2011) to repeated count data. This is a genearlized form of the Royle (2004a) N-mixture model that includes parameters for recruitment and apparent survival.…”
Section: Detailsmentioning
confidence: 99%
See 1 more Smart Citation
“…pcountOpen fits the open population model of Dail and Madsen (2011) to repeated count data. This is a genearlized form of the Royle (2004a) N-mixture model that includes parameters for recruitment and apparent survival.…”
Section: Detailsmentioning
confidence: 99%
“…Fit the models of Dail and Madsen (2011) and Hostetler and Chandler (in press), which are generalized forms of the Usage pcountOpen(lambdaformula, gammaformula, omegaformula, pformula, data, mixture = c("P", "NB", "ZIP"), K, dynamics=c("constant", "autoreg", "notrend", "trend", "ricker", "gompertz"), fix=c("none", "gamma", "omega"), starts, method = "BFGS", se = TRUE, immigration = FALSE, iotaformula =~1, ...)…”
Section: Descriptionmentioning
confidence: 99%
“…To estimate trends in abundance in basking western pond turtles, we used the function "pcountOpen" from the package "unmarked" in R. This function is based on the models of Royle (2004) and Dail and Madsen (2011), and fits an N-mixture model that accounts for the number of animals counted during a field survey is less than the number of animals present and that the difference is variable and unobserved (Royle, 2004;Dail and Madsen, 2011). N-mixture models require repeated count data to assess the probability of detection, and are based in the assumption of a closed population within a season, relaxing that assumption to an open population between seasons.…”
Section: Western Pond Turtlesmentioning
confidence: 99%
“…To separate effects of detection probability from population abundance, formulations of N-mixture models must make assumptions regarding population closure; that is, the extent to which the surveyed population size remains unchanged ('closed') across repeated surveys [37]. To avoid unsupported assumptions about population closure, we contrasted three model categories with decreasing strictness of population closure and increasing model complexity: (i) 'Closed' models (assuming closure across all surveys) [38]; (ii) 'Robust Design' models (assuming closure within but not between clusters of survey periods, aka, 'primary periods'; sensu [39]) [38] and (iii) 'Open' models (assuming no closure across all surveys) [40].…”
Section: (I) Species-level Response To Perceived Predation Riskmentioning
confidence: 99%
“…We used two criteria to evaluate the fit of successfully converged models. First, because N-mixture models tend to overestimate abundance and underestimate detection probability when closure is inappropriately assumed [40], we accepted only models that produced estimates that largely aligned with our biological knowledge of the species (e.g. known territory sizes of species).…”
Section: (I) Species-level Response To Perceived Predation Riskmentioning
confidence: 99%