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Augmenting superpopulation capture-recapture models with population assignment data

October 7, 2011

Ecologists applying capture-recapture models to animal populations sometimes have access to additional information about individuals' populations of origin (e.g., information about genetics, stable isotopes, etc.). Tests that assign an individual's genotype to its most likely source population are increasingly used. Here we show how to augment a superpopulation capture-recapture model with such information. We consider a single superpopulation model without age structure, and split each entry probability into separate components due to births in situ and immigration. We show that it is possible to estimate these two probabilities separately. We first consider the case of perfect information about population of origin, where we can distinguish individuals born in situ from immigrants with certainty. Then we consider the more realistic case of imperfect information, where we use genetic or other information to assign probabilities to each individual's origin as in situ or outside the population. We use a resampling approach to impute the true population of origin from imperfect assignment information. The integration of data on population of origin with capture-recapture data allows us to determine the contributions of immigration and in situ reproduction to the growth of the population, an issue of importance to ecologists. We illustrate our new models with capture-recapture and genetic assignment data from a population of banner-tailed kangaroo rats Dipodomys spectabilis in Arizona.

Publication Year 2011
Title Augmenting superpopulation capture-recapture models with population assignment data
Authors Zhi Wen, Kenneth Pollock, James Nichols, Peter Waser
Publication Type Article
Publication Subtype Journal Article
Series Title Biometrics
Index ID 70005573
Record Source USGS Publications Warehouse
USGS Organization Patuxent Wildlife Research Center