Leveraging the global research infrastructure to characterize the impact of National Science Foundation research
The global research infrastructure (GRI) is made up of the repositories and organizations that provide persistent identifiers (PIDs) and metadata for many kinds of research objects and connect these objects to funders, research institutions, researchers, and one another using PIDs. The INFORMATE Pro...
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Published in | Information services & use Vol. 45; no. 1-2; pp. 30 - 47 |
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Main Authors | , |
Format | Journal Article |
Language | English |
Published |
London, England
SAGE Publications
01.05.2025
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Subjects | |
Online Access | Get full text |
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Summary: | The global research infrastructure (GRI) is made up of the repositories and organizations that provide persistent identifiers (PIDs) and metadata for many kinds of research objects and connect these objects to funders, research institutions, researchers, and one another using PIDs. The INFORMATE Project has combined three data sources to focus on understanding how the global research infrastructure might help the US National Science Foundation (NSF) and other federal agencies identify and characterize the impact of their support. In this paper we present INFORMATE observations of three data systems. The NSF Award database represents NSF funding while the NSF Public Access Repository (PAR) and CHORUS, as a proxy for the GRI, represent two different views of results of that funding. We compare the first at the level of awards and the second two at the level of published research articles. Our findings demonstrate that CHORUS datasets include significantly more NSF awards and more related papers than does PAR. Our findings also suggest that time plays a significant role in the inclusion of award metadata across the sources analyzed. Data in those sources travel very different journeys, each presenting different obstacles to metadata completeness and suggesting necessary actions on the parts of authors and publishers to ensure that publication and funding metadata are captured. We discuss these actions, as well as the implications that our findings have for emergent technologies such as artificial intelligence and natural language processing. |
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ISSN: | 0167-5265 1875-8789 |
DOI: | 10.1177/18758789251336079 |