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http://dx.doi.org/10.14699/kbiblia.2021.32.4.111

A Study on the maDMP (machine-actionable DMP) Implementation Cases and its Application Method  

Kim, Juseop (전북대학교 문헌정보학과)
Kim, Suntae (전북대학교 문헌정보학과)
Han, Yeonjung (국립산림과학원 임산자원이용연구부)
Youe, Won-Jae (국립산림과학원 임산자원이용연구부)
Publication Information
Journal of the Korean BIBLIA Society for library and Information Science / v.32, no.4, 2021 , pp. 111-134 More about this Journal
Abstract
Recently, the preparation and submission of DMP is gradually becoming compulsory, centering on domestic government-funded research institutes. However, as DMP preparation is described in written or free text, there is a problem that research data management cannot be properly explained due to non-standardization and insufficient preparation in terms of standards, formats, and management. Therefore, in this study, a case study was conducted on a machine-readable DMP that can be automatically generated and maintained by a machine, and a method for applying maDMP was proposed. Examples of maDMP investigated included RDCS, Argos, Haplo Repository, and DMap. In addition, the use of permanent identifiers, application of controlled vocabulary, and application of semantic technologies such as ontology can be mentioned as possible ways to apply maDMP.
Keywords
Open Science; DMP (Data Management Plan); maDMP (Machine-Actionable Data Management Plan); RDA (Research Data Alliance); RDCS (RDA Commons Standard);
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