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A comprehensive analysis of autocorrelation and bias in home range estimation

Authors :
Jerrold L. Belant
Orr Spiegel
Wiebke Ullmann
Ran Nathan
Flávia Koch
Kirk A. Olson
Peter C. Thompson
Luiz Gustavo R. Oliveira-Santos
Bruce D. Patterson
Emília Patrícia Medici
Marlee A. Tucker
A. Catherine Markham
Ronaldo Gonçalves Morato
Nuria Selva
Filip Zięba
Matthew J. Kauffman
Florian Jeltsch
Dean E. Beyer
William F. Fagan
René Janssen
Claudia Fichtel
Niels Blaum
Susan C. Alberts
Michael J. Noonan
Jacob R. Goheen
Abdullahi H. Ali
J.J.A. Dekker
Laury Cullen
Sascha Rösner
Adam T. Ford
Jeanne Altmann
Nina Farwig
Rogério Cunha de Paula
Thomas Akre
Jonathan Drescher-Lehman
Pamela Castro Antunes
Scott D. LaPoint
Agnieszka Sergiel
Peter M. Kappeler
Christina Fischer
Emiliano Esterci Ramalho
Marina Xavier da Silva
Tomasz Zwijacz-Kozica
Thomas Mueller
Agustin Paviolo
Dana G. Schabo
Justin M. Calabrese
Katrin Böhning-Gaese
Christen H. Fleming
Source :
CONICET Digital (CONICET), Consejo Nacional de Investigaciones Científicas y Técnicas, instacron:CONICET
Publication Year :
2019
Publisher :
Wiley, 2019.

Abstract

Home range estimation is routine practice in ecological research. While advances in animal tracking technology have increased our capacity to collect data to support home range analysis, these same advances have also resulted in increasingly autocorrelated data. Consequently, the question of which home range estimator to use on modern, highly autocorrelated tracking data remains open. This question is particularly relevant given that most estimators assume independently sampled data. Here, we provide a comprehensive evaluation of the effects of autocorrelation on home range estimation. We base our study on an extensive data set of GPS locations from 369 individuals representing 27 species distributed across five continents. We first assemble a broad array of home range estimators, including Kernel Density Estimation (KDE) with four bandwidth optimizers (Gaussian reference function, autocorrelated-Gaussian reference function [AKDE], Silverman´s rule of thumb, and least squares cross-validation), Minimum Convex Polygon, and Local Convex Hull methods. Notably, all of these estimators except AKDE assume independent and identically distributed (IID) data. We then employ half-sample cross-validation to objectively quantify estimator performance, and the recently introduced effective sample size for home range area estimation ((Formula presented.)) to quantify the information content of each data set. We found that AKDE 95% area estimates were larger than conventional IID-based estimates by a mean factor of 2. The median number of cross-validated locations included in the hold-out sets by AKDE 95% (or 50%) estimates was 95.3% (or 50.1%), confirming the larger AKDE ranges were appropriately selective at the specified quantile. Conversely, conventional estimates exhibited negative bias that increased with decreasing (Formula presented.). To contextualize our empirical results, we performed a detailed simulation study to tease apart how sampling frequency, sampling duration, and the focal animal´s movement conspire to affect range estimates. Paralleling our empirical results, the simulation study demonstrated that AKDE was generally more accurate than conventional methods, particularly for small (Formula presented.). While 72% of the 369 empirical data sets had >1,000 total observations, only 4% had an (Formula presented.) >1,000, where 30% had an (Formula presented.)

Details

ISSN :
15577015 and 00129615
Volume :
89
Database :
OpenAIRE
Journal :
Ecological Monographs
Accession number :
edsair.doi.dedup.....d60b11521284587a77823f4da13143a0