Rigorous home range estimation with movement data: a new autocorrelated kernel density estimator
Smithsonian Conservation Biology Institute · National Zoological Park · +4 more institutions
Abstract
Quantifying animals' home ranges is a key problem in ecology and has important conservation and wildlife management applications. Kernel density estimation (KDE) is a workhorse technique for range delineation problems that is both statistically efficient and nonparametric. KDE assumes that the data are independent and identically distributed (IID). However, animal tracking data, which are routinely used as inputs to KDEs, are inherently autocorrelated and violate this key assumption. As we demonstrate, using realistically autocorrelated data in conventional KDEs results in grossly underestimated home ranges. We further show that the performance of conventional KDEs actually degrades as data quality improves,…
Citation impact
- FWCI
- 18.76
- Percentile
- 100%
- References
- 32
Authors
6- CHChristen H. FlemingCorresponding
Smithsonian Conservation Biology Institute, National Zoological Park, University of Maryland, College Park
- WFWilliam F. Fagan
University of Maryland, College Park
- TMThomas Mueller
Goethe University Frankfurt, Smithsonian Conservation Biology Institute, Senckenberg - Leibniz Institution for Biodiversity and Earth System Research, Senckenberg Biodiversity and Climate Research Centre, National Zoological Park, University of Maryland, College Park
- KAK. A. Olson
Smithsonian Conservation Biology Institute, National Zoological Park
- PLPeter Leimgruber
Smithsonian Conservation Biology Institute, National Zoological Park
Topics & keywords
- Autocorrelation
- Kernel density estimation
- Estimator
- Home range
- Range (aeronautics)
- Ecology
- Computer science
- Econometrics
- Life in Land