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  • × theme_ss:"Theorie verbaler Dokumentationssprachen"
  • × year_i:[2020 TO 2030}
  1. Busch, A.: Terminologiemanagement : erfolgreicher Wissenstransfer durch Concept-Maps und die Überlegungen in DGI-AKTS (2021) 0.02
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    Abstract
    Die Organisation eines effektiven und effizienten Wissenstransfers ist eine große Herausforderung moderner Fachkommunikation. Durch die Aufbereitung von Begriffen und Begriffsbeziehungen in Begriffssystemen und deren übersichtliche und verständliche Visualisierung in einer Concept-Map macht das Terminologiemanagement Wissen einfach und schnell verfügbar. So kann es effizienter für die Fachkommunikation genutzt werden.
    Source
    Information - Wissenschaft und Praxis. 72(2021) H.4, S.185-193
  2. Jia, J.: From data to knowledge : the relationships between vocabularies, linked data and knowledge graphs (2021) 0.01
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    Abstract
    Purpose The purpose of this paper is to identify the concepts, component parts and relationships between vocabularies, linked data and knowledge graphs (KGs) from the perspectives of data and knowledge transitions. Design/methodology/approach This paper uses conceptual analysis methods. This study focuses on distinguishing concepts and analyzing composition and intercorrelations to explore data and knowledge transitions. Findings Vocabularies are the cornerstone for accurately building understanding of the meaning of data. Vocabularies provide for a data-sharing model and play an important role in supporting the semantic expression of linked data and defining the schema layer; they are also used for entity recognition, alignment and linkage for KGs. KGs, which consist of a schema layer and a data layer, are presented as cubes that organically combine vocabularies, linked data and big data. Originality/value This paper first describes the composition of vocabularies, linked data and KGs. More importantly, this paper innovatively analyzes and summarizes the interrelatedness of these factors, which comes from frequent interactions between data and knowledge. The three factors empower each other and can ultimately empower the Semantic Web.
    Date
    22. 1.2021 14:24:32

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