z-logo
Premium
Big data, big metadata and quantitative study of science: A workflow model for big scientometrics
Author(s) -
Bratt Sarah,
Hemsley Jeff,
Qin Jian,
Costa Mark
Publication year - 2017
Publication title -
proceedings of the association for information science and technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.193
H-Index - 14
ISSN - 2373-9231
DOI - 10.1002/pra2.2017.14505401005
Subject(s) - metadata , workflow , cyberinfrastructure , computer science , big data , data science , scientometrics , analytics , metadata modeling , context (archaeology) , world wide web , data element , database , data mining , paleontology , biology
Large cyberinfrastructure‐enabled data repositories generate massive amounts of metadata, enabling big data analytics to leverage on the intersection of technological and methodological advances in data science for the quantitative study of science. This paper introduces a definition of big metadata in the context of scientific data repositories and discusses the challenges in big metadata analytics due to the messiness, lack of structures suitable for analytics and heterogeneity in such big metadata. A methodological framework is proposed, which contains conceptual and computational workflows intercepting through collaborative documentation. The workflow‐based methodological framework promotes transparency and contributes to research reproducibility. The paper also describes the experience and lessons learned from a four‐year big metadata project involving all aspects of the workflow‐based methodologies. The methodological framework presented in this paper is a timely contribution to the field of scientometrics and the science of science and policy as the potential value of big metadata is drawing more attention from research and policy maker communities.

This content is not available in your region!

Continue researching here.

Having issues? You can contact us here