Data from: Occurrence-habitat mismatching and niche truncation when modelling distributions affected by anthropogenic range contractions
Aims: Human-induced pressures such as deforestation cause anthropogenic range contractions (ARCs). Such contractions present dynamic distributions that may engender data misrepresentations within species distribution models. The temporal bias of occurrence data—where occurrences represent distributi...
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Zusammenfassung: | Aims: Human-induced pressures such as deforestation cause anthropogenic
range contractions (ARCs). Such contractions present dynamic distributions
that may engender data misrepresentations within species distribution
models. The temporal bias of occurrence data—where occurrences represent
distributions before (past bias) or after (recent bias) ARCs—underpins
these data misrepresentations. Occurrence-habitat mismatching results when
occurrences sampled before contractions are modelled with contemporary
anthropogenic variables; niche truncation results when occurrences sampled
after contractions are modelled without anthropogenic variables. Our
understanding of their independent and interactive effects on model
performance remains incomplete but is vital for developing good modelling
protocols. Through a virtual ecologist approach, we demonstrate how these
data misrepresentations manifest and investigate their effects on model
performance. Location: Virtual Southeast Asia Methods: Using 100 virtual
species, we simulated ARCs with 100-year land-use data and generated
temporally biased (past, recent) occurrence datasets. We modelled datasets
with and without a contemporary land-use variable (conventional modelling
protocols) and with a temporally dynamic land-use variable. We evaluated
each model’s ability to predict historical and contemporary distributions.
Results: Greater ARC resulted in greater occurrence-habitat mismatching
for datasets with past bias and greater niche truncation for datasets with
recent bias. Occurrence-habitat mismatching prevented models with the
contemporary land-use variable from predicting anthropogenic-related
absences, causing overpredictions of contemporary distributions. Although
niche truncation caused underpredictions of historical distributions
(environmentally suitable habitats), incorporating the contemporary
land-use variable resolved these underpredictions, even when mismatching
occurred. Models with the temporally dynamic land-use variable
consistently outperformed models without. Main conclusions: We showed how
these data misrepresentations can degrade model performance, undermining
their use for empirical research and conservation science. Given the
ubiquity of anthropogenic range contractions, these data
misrepresentations are likely inherent to most datasets. Therefore, we
present a three-step strategy for handling data misrepresentations:
maximise the temporal range of anthropogenic predictors, exclude
mismatched o |
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DOI: | 10.5061/dryad.ttdz08m0g |