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Spatial conservation prioritisation in data-poor countries: a quantitative sensitivity analysis using multiple taxa.

Ahmed El-GabbasFrancis S GilbertCarsten F Dormann
Published in: BMC ecology (2020)
For SCP to be useful, there is a lower limit on data quality, requiring data-poor countries to improve sampling strategies and data quality to obtain unbiased data for as many taxa as possible. Since our sensitivity analysis may not generalise, conservation planners should use sensitivity analyses more routinely, particularly relying on more than one combination of SDM algorithm and surrogate group, consider correction for sampling bias, and compare the spatial patterns of predicted priority sites using a variety of settings. The sensitivity of SCP to connectivity parameters means that the responses of each species to habitat loss are important knowledge gaps.
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