Affiliation:
1. Department of Information Engineering, University of Padua, Italy and CNR-ISTI—National Research Council, Institute of Information Science and Technologies, Italy
2. CNR-ISTI—National Research Council, Institute of Information Science and Technologies, Italy
3. Department of Information Engineering, University of Padua, Italy
Abstract
In the last decade, scholarly graphs became fundamental to storing and managing scholarly knowledge in a structured and machine-readable way. Methods and tools for discovery and impact assessment of science rely on such graphs and their quality to serve scientists, policymakers, and publishers. Since research data became very important in scholarly communication, scholarly graphs started including dataset metadata and their relationships to publications. Such graphs are the foundations for Open Science investigations, data-article publishing workflows, discovery, and assessment indicators. However, due to the heterogeneity of practices (FAIRness is indeed in the making), they often lack the complete and reliable metadata necessary to perform accurate data analysis; e.g., dataset metadata is inaccurate, author names are not uniform, and the semantics of the relationships is unknown, ambiguous or incomplete.
This work describes an open and curated scholarly graph we built and published as a training and test set for data discovery, data connection, author disambiguation, and link prediction tasks. Overall the graph contains 4,047 publications, 5,488 datasets, 22 software, 21,561 authors; 9,692 edges interconnect publications to datasets and software and are labeled with semantics that outline whether a publication is
citing, referencing, documenting
,
supplementing
another product.
To ensure high-quality metadata and semantics, we relied on the information extracted from PDFs of the publications and the datasets and software webpages to curate and enrich nodes metadata and edges semantics. To the best of our knowledge, this is the first ever published resource, including publications and datasets with manually validated and curated metadata.
Funder
EC H2020 project OpenAIRE-Nexus
Publisher
Association for Computing Machinery (ACM)
Subject
Information Systems and Management,Information Systems
Reference51 articles.
1. AIDA: A knowledge graph about research dynamics in academia and industry;Angioni Simone;Quantitative Science Studies,2021
2. Miriam Baglioni, Alessia Bardi, Argiro Kokogiannaki, Paolo Manghi, Katerina Iatropoulou, Pedro Príncipe, André Vieira, Lars Holm Nielsen, Harry Dimitropoulos, Ioannis Foufoulas, Natalia Manola, Claudio Atzori, Sandro La Bruzzo, Emma Lazzeri, Michele Artini, Michele De Bonis, and Andrea Dell’Amico. 2019. The OpenAIRE research community dashboard: On blending scientific workflows and scientific publishing. In Proceedings of the International Conference on Theory and Practice of Digital Libraries. Springer, 56–69.
3. Measuring the value of research data: A citation analysis of oceanographic data sets;Belter Christopher W.;PLoS One,2014
4. Dan Brickley, Matthew Burgess, and Natasha Noy. 2019. Google dataset search: Building a search engine for datasets in an open Web ecosystem. In Proceedings of the World Wide Web Conference. 1365–1375.
5. Data citation and the citation graph
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献