Modified home range kernel density estimators that take environmental interactions into account.

Guillaume Péron
Author Information
  1. Guillaume Péron: Univ Lyon, Université Lyon 1, CNRS, Laboratoire de Biométrie et Biologie Evolutive UMR5558, F-69622 Villeurbanne, France. ORCID

Abstract

BACKGROUND: Kernel density estimation (KDE) is a major tool in the movement ecologist toolbox that is used to delineate where geo-tracked animals spend their time. Because KDE bandwidth optimizers are sensitive to temporal autocorrelation, statistically-robust alternatives have been advocated, first, data-thinning procedures, and more recently, autocorrelated kernel density estimation (AKDE). These yield asymptotically consistent, but very smoothed distributions, which may feature biologically unrealistic aspects such as spilling beyond impassable borders.
METHOD: I introduce a semi-parametric variant of AKDE designed to extrapolate more realistic home range shapes by incorporating movement mechanisms into the bandwidth optimizer and into the base kernels. I implement a first approximative version based on the step selection framework. This method allows accommodating land cover selection, permeability of linear features, and attraction for select landscape features when delineating home ranges.
RESULTS: In a plains zebra (), the reluctance to cross a railway, the avoidance of dense woodland, and the preference for grassland when foraging created significant differences between the estimated home range contours by the new and by previous methods.
CONCLUSION: There is a tradeoff to find between fully parametric density estimators, which can be very realistic but need to be provided with a good model and adequate environmental data, and non-parametric density estimators, which are more widely applicable and asymptotically consistent, but whose details are bandwidth-limited. The proposed semi-parametric approach attempts to strike this balance, but I outline a few areas of future improvement. I expect the approach to find its use in studies that compare extrapolated resource availability and interpolated resource use, in order to discover the movement mechanisms that we need to improve the extrapolations.

Keywords

References

  1. J Anim Ecol. 2006 Nov;75(6):1393-405 [PMID: 17032372]
  2. Ecology. 2006 Dec;87(12):3021-8 [PMID: 17249227]
  3. Biometrics. 2008 Sep;64(3):968-76 [PMID: 18047525]
  4. Ecology. 2009 Dec;90(12):3554-65 [PMID: 20120822]
  5. Philos Trans R Soc Lond B Biol Sci. 2010 Jul 27;365(1550):2221-31 [PMID: 20566499]
  6. Philos Trans R Soc Lond B Biol Sci. 2010 Jul 27;365(1550):2233-44 [PMID: 20566500]
  7. PLoS One. 2011 Jan 26;6(1):e14592 [PMID: 21297869]
  8. J Anim Ecol. 2013 Nov;82(6):1155-64 [PMID: 23800202]
  9. J Anim Ecol. 2016 Jan;85(1):43-53 [PMID: 25056207]
  10. Ecology. 2015 May;96(5):1182-8 [PMID: 26236833]
  11. Ecology. 2016 Mar;97(3):576-82 [PMID: 27197385]
  12. Ann N Y Acad Sci. 1968 Jan;146(1):119-37 [PMID: 5238627]

Word Cloud

Created with Highcharts 10.0.0densityhomeselectionmovementAKDErangeestimatorsestimationKDEbandwidthautocorrelationfirstkernelasymptoticallyconsistentsemi-parametricrealisticmechanismsfeaturesfindneedenvironmentalapproachuseresourceBACKGROUND:Kernelmajortoolecologisttoolboxuseddelineategeo-trackedanimalsspendtimeoptimizerssensitivetemporalstatistically-robustalternativesadvocateddata-thinningproceduresrecentlyautocorrelatedyieldsmootheddistributionsmayfeaturebiologicallyunrealisticaspectsspillingbeyondimpassablebordersMETHOD:introducevariantdesignedextrapolateshapesincorporatingoptimizerbasekernelsimplementapproximativeversionbasedstepframeworkmethodallowsaccommodatinglandcoverpermeabilitylinearattractionselectlandscapedelineatingrangesRESULTS:plainszebrareluctancecrossrailwayavoidancedensewoodlandpreferencegrasslandforagingcreatedsignificantdifferencesestimatedcontoursnewpreviousmethodsCONCLUSION:tradeofffullyparametriccanprovidedgoodmodeladequatedatanon-parametricwidelyapplicablewhosedetailsbandwidth-limitedproposedattemptsstrikebalanceoutlineareasfutureimprovementexpectstudiescompareextrapolatedavailabilityinterpolatedorderdiscoverimproveextrapolationsModifiedtakeinteractionsaccountMovementecologyPointprocesspatternResourceSemiparametricStepfunctionTemporal

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