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FAIR + FIT: Guiding Principles and Functional Metrics for Linked Open Data (LOD) KOS Products Cover

FAIR + FIT: Guiding Principles and Functional Metrics for Linked Open Data (LOD) KOS Products

Open Access
|Apr 2020

Abstract

Purpose

To develop a set of metrics and identify criteria for assessing the functionality of LOD KOS products while providing common guiding principles that can be used by LOD KOS producers and users to maximize the functions and usages of LOD KOS products.

Design/methodology/approach

Data collection and analysis were conducted at three time periods in 2015–16, 2017 and 2019. The sample data used in the comprehensive data analysis comprises all datasets tagged as types of KOS in the Datahub and extracted through their respective SPARQL endpoints. A comparative study of the LOD KOS collected from terminology services Linked Open Vocabularies (LOV) and BioPortal was also performed.

Findings

The study proposes a set of Functional, Impactful and Transformable (FIT) metrics for LOD KOS as value vocabularies. The FAIR principles, with additional recommendations, are presented for LOD KOS as open data.

Research limitations

The metrics need to be further tested and aligned with the best practices and international standards of both open data and various types of KOS.

Practical implications

Assessment performed with FAIR and FIT metrics support the creation and delivery of user-friendly, discoverable and interoperable LOD KOS datasets which can be used for innovative applications, act as a knowledge base, become a foundation of semantic analysis and entity extractions and enhance research in science and the humanities.

Originality/value

Our research provides best practice guidelines for LOD KOS as value vocabularies.

DOI: https://doi.org/10.2478/jdis-2020-0008 | Journal eISSN: 2543-683X | Journal ISSN: 2096-157X
Language: English
Page range: 93 - 118
Submitted on: Jan 18, 2020
Accepted on: Mar 16, 2020
Published on: Apr 22, 2020
Published by: Chinese Academy of Sciences, National Science Library
In partnership with: Paradigm Publishing Services

© 2020 Marcia Lei Zeng, Julaine Clunis, published by Chinese Academy of Sciences, National Science Library
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 License.