A globally synthesised and flagged bee occurrence dataset and cleaning workflow

Author:

Dorey James B.ORCID,Fischer Erica E.ORCID,Chesshire Paige R.,Nava-Bolaños AngelaORCID,O’Reilly Robert L.ORCID,Bossert Silas,Collins Shannon M.,Lichtenberg Elinor M.ORCID,Tucker Erika M.ORCID,Smith-Pardo Allan,Falcon-Brindis Armando,Guevara Diego A.,Ribeiro Bruno,de Pedro Diego,Pickering John,Hung Keng-Lou James,Parys Katherine A.ORCID,McCabe Lindsie M.,Rogan Matthew S.,Minckley Robert L.,Velazco Santiago J. E.,Griswold Terry,Zarrillo Tracy A.ORCID,Jetz WalterORCID,Sica Yanina V.,Orr Michael C.,Guzman Laura Melissa,Ascher John S.,Hughes Alice C.,Cobb Neil S.

Abstract

AbstractSpecies occurrence data are foundational for research, conservation, and science communication, but the limited availability and accessibility of reliable data represents a major obstacle, particularly for insects, which face mounting pressures. We present BeeBDC, a new R package, and a global bee occurrence dataset to address this issue. We combined >18.3 million bee occurrence records from multiple public repositories (GBIF, SCAN, iDigBio, USGS, ALA) and smaller datasets, then standardised, flagged, deduplicated, and cleaned the data using the reproducible BeeBDC R-workflow. Specifically, we harmonised species names (following established global taxonomy), country names, and collection dates and, we added record-level flags for a series of potential quality issues. These data are provided in two formats, “cleaned” and “flagged-but-uncleaned”. The BeeBDC package with online documentation provides end users the ability to modify filtering parameters to address their research questions. By publishing reproducible R workflows and globally cleaned datasets, we can increase the accessibility and reliability of downstream analyses. This workflow can be implemented for other taxa to support research and conservation.

Funder

National Science Foundation

E.O. Wilson Biodiversity Foundation

American Museum of Natural History

National Science Foundation of China | Major International Joint Research Programme

National Research Foundation Singapore

Publisher

Springer Science and Business Media LLC

Subject

Library and Information Sciences,Statistics, Probability and Uncertainty,Computer Science Applications,Education,Information Systems,Statistics and Probability

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