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Title: Curating Scientific Information in Knowledge Infrastructures
Authors: Stocker, MarkusPaasonen, PauliFiebig, MarkusZaidan, Martha A.Hardisty, Alex
Publishers version: https://doi.org/10.5334/dsj-2018-021
URI: https://oa.tib.eu/renate/handle/123456789/10939
http://dx.doi.org/10.34657/9965
Issue Date: 2018
Published in: Data science journal : a journal of the Committee on Data for Science and Technology (CODATA) of the International Council for Science (ICSU) 17 (2018)
Journal: Data science journal : a journal of the Committee on Data for Science and Technology (CODATA) of the International Council for Science (ICSU)
Volume: 17
Page Start: 21
Publisher: Paris : CODATA
Abstract: Interpreting observational data is a fundamental task in the sciences, specifically in earth and environmental science where observational data are increasingly acquired, curated, and published systematically by environmental research infrastructures. Typically subject to substantial processing, observational data are used by research communities, their research groups and individual scientists, who interpret such primary data for their meaning in the context of research investigations. The result of interpretation is information—meaningful secondary or derived data—about the observed environment. Research infrastructures and research communities are thus essential to evolving uninterpreted observational data to information. In digital form, the classical bearer of information are the commonly known “(elaborated) data products,” for instance maps. In such form, meaning is generally implicit e.g., in map colour coding, and thus largely inaccessible to machines. The systematic acquisition, curation, possible publishing and further processing of information gained in observational data interpretation—as machine readable data and their machine readable meaning—is not common practice among environmental research infrastructures. For a use case in aerosol science, we elucidate these problems and present a Jupyter based prototype infrastructure that exploits a machine learning approach to interpretation and could support a research community in interpreting observational data and, more importantly, in curating and further using resulting information about a studied natural phenomenon.
Keywords: Data interpretation; Data science; Data use; Environmental knowledge infrastructures; Environmental research infrastructures; Informatics; Linked data; Semantic information
Type: article; Text
Publishing status: publishedVersion
DDC: 500
License: CC BY 4.0 Unported
Link to license: https://creativecommons.org/licenses/by/4.0
Appears in Collections:Informatik
Informationswissenschaften

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Stocker, Markus, Pauli Paasonen, Markus Fiebig, Martha A. Zaidan and Alex Hardisty, 2018. Curating Scientific Information in Knowledge Infrastructures. 2018. Paris : CODATA
Stocker, M., Paasonen, P., Fiebig, M., Zaidan, M. A. and Hardisty, A. (2018) “Curating Scientific Information in Knowledge Infrastructures.” Paris : CODATA. doi: https://doi.org/10.5334/dsj-2018-021.
Stocker M, Paasonen P, Fiebig M, Zaidan M A, Hardisty A. Curating Scientific Information in Knowledge Infrastructures. Vol. 17. Paris : CODATA; 2018.
Stocker, M., Paasonen, P., Fiebig, M., Zaidan, M. A., & Hardisty, A. (2018). Curating Scientific Information in Knowledge Infrastructures (Version publishedVersion, Vol. 17). Version publishedVersion, Vol. 17. Paris : CODATA. https://doi.org/https://doi.org/10.5334/dsj-2018-021
Stocker M, Paasonen P, Fiebig M, Zaidan M A, Hardisty A. Curating Scientific Information in Knowledge Infrastructures. 2018;17. doi:https://doi.org/10.5334/dsj-2018-021


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