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Analysis of biodiversity data suggests that mammal species are hidden in predictable places

PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA(2022)

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Abstract
Research in the biological sciences is hampered by the Linnean shortfall, which describes the number of hidden species that are suspected of existing without formal species description. Using machine learning and species delimitation methods, we built a predictive model that incorporates some 5.0 x 10(5) data points for 117 species traits, 3.3 x 10(6) occurrence records, and 9.1 x 10(5) gene sequences from 4,310 recognized species of mammals Delimitation results suggest that there are hundreds of undescribed species in class Mammalia. Predictive modeling indicates that most of these hidden species will be found in small-bodied taxa with large ranges characterized by high variability in temperature and precipitation. As demonstrated by a quantitative analysis of the literature, such taxa have long been the focus of taxonomic research. This analysis supports taxonomic hypotheses regarding where undescribed diversity is likely to be found and highlights the need for investment in taxonomic research to overcome the Linnean shortfall.
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Key words
cryptic species, taxonomy, predictive modeling, species delimitation, class Mammalia
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