sameAs
Uncertainty analysis for regional-scale reserve selectionGreen Infrastructure Design Based on Spatial Conservation Prioritization and Modeling of Biodiversity Features and Ecosystem ServicesPredicting species distributions for conservation decisionsOn estimating probability of presence from use-availability or presence-background data.Detecting extinction risk from climate change by IUCN Red List criteria.Bias correction in species distribution models: pooling survey and collection data for multiple speciesPresence-only data and the em algorithm.Sample selection bias and presence-only distribution models: implications for background and pseudo-absence data.POC plots: calibrating species distribution models with presence-only data.Biocrust morphogroups provide an effective and rapid assessment tool for drylands.Determinants of reproductive success in dominant pairs of clownfish: a boosted regression tree analysis.A working guide to boosted regression trees.Fauna habitat modelling and mapping: A review and case study in the Lower Hunter Central Coast region of NSWImproving decisions for invasive species management: reformulation and extensions of the Panetta-Lawes eradication graphUnderstanding niche shifts: using current and historical data to model the invasive redlegged earth mite, Halotydeus destructorAlien invaders and reptile traders: what drives the live animal trade in South Africa?Collinearity: a review of methods to deal with it and a simulation study evaluating their performanceIs my species distribution model fit for purpose? Matching data and models to applicationsEliciting and integrating expert knowledge for wildlife habitat modellingProjecting climate change impacts on species distributions in megadiverse South African Cape and Southwest Australian Floristic Regions: Opportunities and challengesMaxent is not a presence-absence method: a comment on Thibaudet alWhat do we gain from simplicity versus complexity in species distribution models?The influence of spatial errors in species occurrence data used in distribution modelsSensitivity of predictive species distribution models to change in grain sizeWHAT MATTERS FOR PREDICTING THE OCCURRENCES OF TREES: TECHNIQUES, DATA, OR SPECIES' CHARACTERISTICS?Novel methods improve prediction of species’ distributions from occurrence dataPlant extinction risk under climate change: are forecast range shifts alone a good indicator of species vulnerability to global warming?Pushing the limits in marine species distribution modelling: lessons from the land present challenges and opportunitiesTesting a model of biological soil crust successionInteractive effects of climate change and fire on metapopulation viability of a forest-dependent frog in south-eastern AustraliaPoint process models for presence-only analysisPredicting distribution changes of a mire ecosystem under future climatesTaxonomic uncertainty and decision making for biosecurity: spatial models for myrtle/guava rustPredicting to new environments: tools for visualizing model behaviour and impacts on mapped distributionsSatellite surface reflectance improves habitat distribution mapping: a case study on heath and shrub formations in the Cantabrian Mountains (NW Spain)Spatial data for modelling and management of freshwater ecosystemsA statistical explanation of MaxEnt for ecologistsSurprisingly fast recovery of biological soil crusts following livestock removal in southern AustraliaAssessing the impacts of climate change and land transformation onBanksiain the South West Australian Floristic RegionDo they? How do they? WHY do they differ? On finding reasons for differing performances of species distribution models
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P50
description
Australian scientist
@en
Australian scientist
@en-ca
Australian scientist
@en-gb
aŭstralia sciencisto
@eo
científica australiana
@es
ecoloog
@nl
nolavan Laustralänik
@vo
siensiste australian
@lfn
عالمة أسترالية
@ar
name
Jane Elith
@ast
Jane Elith
@de
Jane Elith
@en
Jane Elith
@es
Jane Elith
@nl
Jane Elith
@sl
Элит, Джейн
@ru
type
label
Jane Elith
@ast
Jane Elith
@de
Jane Elith
@en
Jane Elith
@es
Jane Elith
@nl
Jane Elith
@sl
Элит, Джейн
@ru
prefLabel
Jane Elith
@ast
Jane Elith
@de
Jane Elith
@en
Jane Elith
@es
Jane Elith
@nl
Jane Elith
@sl
Элит, Джейн
@ru
P1053
F-2022-2015
P106
P1153
8046847200
P21
P31
P3829
P496
0000-0002-8706-0326