Litcius/Paper detail

Provoking a Cultural Shift in Data Quality

Sarah E. McCord, Nicholas P. Webb, Justin W. Van Zee, Sarah H. Burnett, Erica M. Christensen, Ericha M. Courtright, Christine Laney, Claire Lunch, Connie M. Maxwell, Jason W. Karl, Amalia Slaughter, Nelson G. Stauffer, C. E. Tweedie

2021BioScience33 citationsDOIOpen Access PDF

Abstract

Ecological studies require quality data to describe the nature of ecological processes and to advance understanding of ecosystem change. Increasing access to big data has magnified both the burden and the complexity of ensuring quality data. The costs of errors in ecology include low use of data, increased time spent cleaning data, and poor reproducibility that can result in a misunderstanding of ecosystem processes and dynamics, all of which can erode the efficacy of and trust in ecological research. Although conceptual and technological advances have improved ecological data access and management, a cultural shift is needed to embed data quality as a cultural practice. We present a comprehensive data quality framework to evoke this cultural shift. The data quality framework flexibly supports different collaboration models, supports all types of ecological data, and can be used to describe data quality within both short- and long-term ecological studies.

Topics & Concepts

Quality (philosophy)Data qualityData scienceEcologyConceptual modelEnvironmental resource managementComputer scienceParadigm shiftConceptual frameworkEnvironmental scienceSociologyDatabaseEngineeringSocial scienceBiologyOperations managementMetric (unit)EpistemologyPhilosophyResearch Data Management PracticesEnvironmental DNA in Biodiversity StudiesSpecies Distribution and Climate Change