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Quantitative comparison and selection of home range metrics for telemetry data
Author(s) -
Cumming Graeme S.,
Cornélis Daniel
Publication year - 2012
Publication title -
diversity and distributions
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.918
H-Index - 118
eISSN - 1472-4642
pISSN - 1366-9516
DOI - 10.1111/j.1472-4642.2012.00908.x
Subject(s) - estimator , statistic , statistics , range (aeronautics) , telemetry , context (archaeology) , computer science , kernel density estimation , ecology , mathematics , biology , engineering , telecommunications , paleontology , aerospace engineering
Aim Home range ( HR ) metrics are widely used in ecology and conservation, but the quantitative basis for choosing and parameterizing metrics is weak. Home range estimates are ecological and statistical hypotheses that must balance type I and type II errors. Here, we present and test a new approach to fine‐tuning and comparing HR estimates using the area under the curve ( AUC ) statistic. Location Test data are taken from telemetry studies of 44 individual ducks in southern A frica and nine buffaloes in southern and western A frica. Methods We use a meta‐analysis of AUC statistics to compare the performance of four standard HR metrics on data from 44 ducks (two species) and nine A frican buffaloes. Results The AUC method emerges as a useful and accessible statistical tool. It captures clear differences between HR estimators as well as providing a way of fine‐tuning parameters for an individual HR estimate. Code to run the HR AUC analyses in R is provided. As argued by others, we found that kernel density estimators offer the best combination of ecological and statistical validity, while estimators that use minimum convex polygons at any stage of the algorithm perform poorly and should be avoided. Main conclusions The AUC statistic provides a readily implementable and straightforward approach to comparing different HR metrics and to selecting parameters for individual metrics. It thus offers a valuable tool for conservation efforts that seek to define HR s for species or populations. The use of the AUC in this new context further contributes to solidifying the interface between species occurrence models and HR estimators.

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