Abstract

Reliable estimates of population size are fundamental in many ecological studies and biodiversity conservation. Selecting appropriate methods to estimate abundance is often very difficult, especially if data are scarce. Most studies concerning the reliability of different estimators used simulation data based on assumptions about capture variability that do not necessarily reflect conditions in natural populations. Here, we used data from an intensively studied closed population of the arboreal gecko Gehyra variegata to construct reference population sizes for assessing twelve different population size estimators in terms of bias, precision, accuracy, and their 95%-confidence intervals. Two of the reference populations reflect natural biological entities, whereas the other reference populations reflect artificial subsets of the population. Since individual heterogeneity was assumed, we tested modifications of the Lincoln-Petersen estimator, a set of models in programs MARK and CARE-2, and a truncated geometric distribution. Ranking of methods was similar across criteria. Models accounting for individual heterogeneity performed best in all assessment criteria. For populations from heterogeneous habitats without obvious covariates explaining individual heterogeneity, we recommend using the moment estimator or the interpolated jackknife estimator (both implemented in CAPTURE/MARK). If data for capture frequencies are substantial, we recommend the sample coverage or the estimating equation (both models implemented in CARE-2). Depending on the distribution of catchabilities, our proposed multiple Lincoln-Petersen and a truncated geometric distribution obtained comparably good results. The former usually resulted in a minimum population size and the latter can be recommended when there is a long tail of low capture probabilities. Models with covariates and mixture models performed poorly. Our approach identified suitable methods and extended options to evaluate the performance of mark-recapture population size estimators under field conditions, which is essential for selecting an appropriate method and obtaining reliable results in ecology and conservation biology, and thus for sound management.

Highlights

  • Knowledge of population size is of key importance in many fields of animal ecology, evolution, and conservation biology

  • Besides the estimator chosen by the discriminant function [Appropriate], we evaluated the two Mh models implemented in CAPTURE: the interpolated jackknife estimator [Interpolated Jackknife (IntJK)] [33,34] and the moment estimator [Moment Estimator (ME)] of Chao (1987, 1988), which sometimes is referred to as the lower bound estimator[35,36]

  • We evaluated the mean Petersen estimate [Mean Petersen Estimate (MPE)] [3], which is the mean of the Petersen estimates calculated for each stage of sampling, with the number of marked individuals in the population based on the combined data of all previous sampling occasions of the primary period

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Summary

Introduction

Knowledge of population size is of key importance in many fields of animal ecology, evolution, and conservation biology. Capture-mark-recapture (CMR) is a commonly used approach for estimating population size [1,2,3,4,5]. Field biologists are faced with the difficulty of deciding which approach to use and how reliable the selected method is for the populations they study [5,6,8]. This problem is exacerbated by the existence of a range of alternative methods using similar biological assumptions about the capture process. Good recommendations based on field data for the most suitable methods for various natural populations are needed to validate and complement simulation studies

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