2016
DOI: 10.1093/sysbio/syw064
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SpeciesGeoCoder: Fast Categorization of Species Occurrences for Analyses of Biodiversity, Biogeography, Ecology, and Evolution

Abstract: Understanding the patterns and processes underlying the uneven distribution of biodiversity across space constitutes a major scientific challenge in systematic biology and biogeography, which largely relies on effectively mapping and making sense of rapidly increasing species occurrence data. There is thus an urgent need for making the process of coding species into spatial units faster, automated, transparent, and reproducible. Here we present SpeciesGeoCoder, an open-source software package written in Python… Show more

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Cited by 77 publications
(70 citation statements)
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“…It is important to stress that the accuracy of the georeferencing in such datasets is crucial for estimating risk. Two recently released R packages, Biogeo (Robertson, Visser, & Hui, ) and speciesgeocode R (Töpel et al., ), are designed to help curate and clean large datasets, and are thus complementary to ConR .…”
Section: Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…It is important to stress that the accuracy of the georeferencing in such datasets is crucial for estimating risk. Two recently released R packages, Biogeo (Robertson, Visser, & Hui, ) and speciesgeocode R (Töpel et al., ), are designed to help curate and clean large datasets, and are thus complementary to ConR .…”
Section: Discussionmentioning
confidence: 99%
“…); and (3) extreme fluctuation of certain aspects of the taxon's distribution (Table ). Calculation of the two key range parameters, EOO and AOO, can be easily automated either using a taxon‐by‐taxon approach, as provided for by the web service GeoCAT (Bachman, Moat, Hill, de la Torre, & Scott, ), or in batch mode, for example in other R packages such as speciesgeocodeR (Töpel et al., ) or RED (https://CRAN.R-project.org/package=red; see Table ).…”
Section: The Conr Packagementioning
confidence: 99%
“…Georeferenced records for Pooideae and outgroup taxa were downloaded from the Global Biodiversity Information Facility (GBIF.org, , ) using the rgbif package in R (Chamberlain & Boettiger, ). To exclude unreliable records, we discarded coordinates with fewer than three decimals and used additional filtering implemented in the SpeciesGeoCoder package (Töpel et al, ) in R. In short, we discarded records where coordinates: (a) were not valid (not part of the coordinate system, or marine coordinates); (b) were exactly or close to zero (threshold 0.5); (c) were the same for latitude and longitude; (d) had the same values as the capital of the country; (e) lay outside the polygon of the country; or (f) had the same value as the GBIF institutions. Taxa with synonymous names were merged using taxonomic information from GBIF.…”
Section: Methodsmentioning
confidence: 99%
“…We defined five biogeographic operational areas: (A) Antilles; (B) Central America; (C) South America; (D) North America; and (E) rest of the world (Figure ). Species distributions were coded using the R implementation in the software package SpeciesGeoCoder v.1.0‐4 (Töpel et al., ). The output presence–absence matrix was visually inspected and corrected manually for erroneous assignments.…”
Section: Methodsmentioning
confidence: 99%